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authorTodor Balabanov <todor.balabanov@gmail.com>2019-05-12 10:35:45 +0300
committerJulien Nabet <serval2412@yahoo.fr>2019-05-12 22:50:34 +0200
commit51387dc280dadf7a29d215a72d2d0026451d2be6 (patch)
tree505567527c309db5be92fc50e6ae942f7cc12737 /nlpsolver
parentc5338e3ad116dbde0aed801f459173231716efa3 (diff)
Formatting - Eclipse IDE Java Conventions with spaces for indentation.
Change-Id: I0c3e50ef25bda0bc4ae59665a07848fe75507121 Reviewed-on: https://gerrit.libreoffice.org/72185 Reviewed-by: Julien Nabet <serval2412@yahoo.fr> Tested-by: Jenkins
Diffstat (limited to 'nlpsolver')
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/DEPSAgent.java29
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/AbsGTBehavior.java3
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/DEGTBehavior.java31
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/PSGTBehavior.java43
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalElement.java23
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalStruct.java15
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/IEncodeEngine.java2
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/BasicBound.java27
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/RandomGenerator.java99
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/ACRComparator.java21
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/BCHComparator.java17
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/IGoodnessCompareEngine.java7
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/ILibEngine.java3
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/Library.java34
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/SearchPoint.java17
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/problem/ProblemEncoder.java33
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/sco/SCAgent.java79
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/BasicPoint.java2
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignDim.java13
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignSpace.java29
-rw-r--r--nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/ILocationEngine.java2
21 files changed, 254 insertions, 275 deletions
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/DEPSAgent.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/DEPSAgent.java
index 50ab8fd8c8f0..0f1240df9a1b 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/DEPSAgent.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/DEPSAgent.java
@@ -44,25 +44,25 @@ import net.adaptivebox.space.BasicPoint;
public class DEPSAgent implements ILibEngine {
- //Describes the problem to be solved
+ // Describes the problem to be solved
private ProblemEncoder problemEncoder;
- //Forms the goodness landscape
+ // Forms the goodness landscape
private IGoodnessCompareEngine qualityComparator;
- //store the point that generated in current learning cycle
+ // store the point that generated in current learning cycle
private SearchPoint trailPoint;
- //temp variable
+ // temp variable
private AbsGTBehavior selectGTBehavior;
- //the own memory: store the point that generated in old learning cycle
+ // the own memory: store the point that generated in old learning cycle
private BasicPoint pold_t;
- //the own memory: store the point that generated in last learning cycle
+ // the own memory: store the point that generated in last learning cycle
private BasicPoint pcurrent_t;
- //the own memory: store the personal best point
+ // the own memory: store the personal best point
private SearchPoint pbest_t;
- //Generate-and-test Behaviors
+ // Generate-and-test Behaviors
private DEGTBehavior deGTBehavior;
private PSGTBehavior psGTBehavior;
public double switchP = 0.5;
@@ -88,7 +88,7 @@ public class DEPSAgent implements ILibEngine {
}
private AbsGTBehavior getGTBehavior() {
- if (Math.random()<switchP) {
+ if (Math.random() < switchP) {
return deGTBehavior;
} else {
return psGTBehavior;
@@ -97,23 +97,23 @@ public class DEPSAgent implements ILibEngine {
public void setGTBehavior(AbsGTBehavior gtBehavior) {
if (gtBehavior instanceof DEGTBehavior) {
- deGTBehavior = ((DEGTBehavior)gtBehavior);
+ deGTBehavior = ((DEGTBehavior) gtBehavior);
deGTBehavior.setPbest(pbest_t);
return;
}
if (gtBehavior instanceof PSGTBehavior) {
- psGTBehavior = ((PSGTBehavior)gtBehavior);
+ psGTBehavior = ((PSGTBehavior) gtBehavior);
psGTBehavior.setMemPoints(pbest_t, pcurrent_t, pold_t);
return;
}
}
public void generatePoint() {
- // generates a new point in the search space (S) based on
- // its memory and the library
+// generates a new point in the search space (S) based on
+// its memory and the library
selectGTBehavior = this.getGTBehavior();
selectGTBehavior.generateBehavior(trailPoint, problemEncoder);
- //evaluate into goodness information
+// evaluate into goodness information
problemEncoder.evaluate(trailPoint);
}
@@ -125,4 +125,3 @@ public class DEPSAgent implements ILibEngine {
return trailPoint;
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/AbsGTBehavior.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/AbsGTBehavior.java
index 3e556719bfdb..b811572ada82 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/AbsGTBehavior.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/AbsGTBehavior.java
@@ -23,7 +23,7 @@ import net.adaptivebox.knowledge.SearchPoint;
import net.adaptivebox.problem.ProblemEncoder;
abstract public class AbsGTBehavior {
- //The referred social library
+ // The referred social library
protected Library socialLib;
public void setLibrary(Library lib) {
@@ -34,4 +34,3 @@ abstract public class AbsGTBehavior {
abstract public void testBehavior(SearchPoint trailPoint, IGoodnessCompareEngine qualityComparator);
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/DEGTBehavior.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/DEGTBehavior.java
index dc7f7400cd58..40e570a77559 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/DEGTBehavior.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/DEGTBehavior.java
@@ -37,11 +37,11 @@ import net.adaptivebox.problem.ProblemEncoder;
import net.adaptivebox.space.BasicPoint;
public class DEGTBehavior extends AbsGTBehavior implements ILibEngine {
- private static final int DVNum = 2; //Number of differential vectors, normally be 1 or 2
- public double FACTOR = 0.5; //scale constant: (0, 1.2], normally be 0.5
- public double CR = 0.9; //crossover constant: [0, 1], normally be 0.1 or 0.9
+ private static final int DVNum = 2; // Number of differential vectors, normally be 1 or 2
+ public double FACTOR = 0.5; // scale constant: (0, 1.2], normally be 0.5
+ public double CR = 0.9; // crossover constant: [0, 1], normally be 0.1 or 0.9
- //the own memory: store the point that generated in last learning cycle
+ // the own memory: store the point that generated in last learning cycle
private SearchPoint pbest_t;
public void setPbest(SearchPoint pbest) {
@@ -51,16 +51,14 @@ public class DEGTBehavior extends AbsGTBehavior implements ILibEngine {
/**
* Crossover and mutation for a single vector element done in a single step.
*
- * @param index
- * Index of the trial vector element to be changed.
- * @param trialVector
- * Trial vector reference.
- * @param globalVector
- * Global best found vector reference.
- * @param differenceVectors
- * List of vectors used for difference delta calculation.
+ * @param index Index of the trial vector element to be changed.
+ * @param trialVector Trial vector reference.
+ * @param globalVector Global best found vector reference.
+ * @param differenceVectors List of vectors used for difference delta
+ * calculation.
*/
- private void crossoverAndMutation(int index, double trialVector[], double globalVector[], BasicPoint differenceVectors[]) {
+ private void crossoverAndMutation(int index, double trialVector[], double globalVector[],
+ BasicPoint differenceVectors[]) {
double delta = 0D;
for (int i = 0; i < differenceVectors.length; i++) {
@@ -110,11 +108,10 @@ public class DEGTBehavior extends AbsGTBehavior implements ILibEngine {
}
private SearchPoint[] getReferPoints() {
- SearchPoint[] referPoints = new SearchPoint[DVNum*2];
- for(int i=0; i<referPoints.length; i++) {
- referPoints[i] = socialLib.getSelectedPoint(RandomGenerator.intRangeRandom(0, socialLib.getPopSize()-1));
+ SearchPoint[] referPoints = new SearchPoint[DVNum * 2];
+ for (int i = 0; i < referPoints.length; i++) {
+ referPoints[i] = socialLib.getSelectedPoint(RandomGenerator.intRangeRandom(0, socialLib.getPopSize() - 1));
}
return referPoints;
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/PSGTBehavior.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/PSGTBehavior.java
index a946b2301f9e..afd18390e630 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/PSGTBehavior.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/deps/behavior/PSGTBehavior.java
@@ -63,20 +63,22 @@ import net.adaptivebox.space.BasicPoint;
import net.adaptivebox.space.DesignSpace;
public class PSGTBehavior extends AbsGTBehavior {
- // Two normally choices for (c1, c2, weight), i.e., (2, 2, 0.4), or (1.494, 1.494, 0.729)
- // The first is used in dissipative PSO (cf. [4]) as CL>0, and the second is achieved by using
+ // Two normally choices for (c1, c2, weight), i.e., (2, 2, 0.4), or (1.494,
+ // 1.494, 0.729)
+ // The first is used in dissipative PSO (cf. [4]) as CL>0, and the second is
+ // achieved by using
// constriction factors (cf. [3])
- public double c1=2;
- public double c2=2;
- public double weight = 0.4; //inertia weight
+ public double c1 = 2;
+ public double c2 = 2;
+ public double weight = 0.4; // inertia weight
- public double CL=0; //See ref[4], normally be 0.001~0.005
+ public double CL = 0; // See ref[4], normally be 0.001~0.005
- //the own memory: store the point that generated in old learning cycle
+ // the own memory: store the point that generated in old learning cycle
private BasicPoint pold_t;
- //the own memory: store the point that generated in last learning cycle
+ // the own memory: store the point that generated in last learning cycle
private BasicPoint pcurrent_t;
- //the own memory: store the personal best point
+ // the own memory: store the personal best point
private SearchPoint pbest_t;
public void setMemPoints(SearchPoint pbest, BasicPoint pcurrent, BasicPoint pold) {
@@ -91,21 +93,21 @@ public class PSGTBehavior extends AbsGTBehavior {
DesignSpace designSpace = problemEncoder.getDesignSpace();
int DIMENSION = designSpace.getDimension();
double deltaxb, deltaxbm;
- for (int b=0;b<DIMENSION;b++) {
- if (Math.random()<CL) {
+ for (int b = 0; b < DIMENSION; b++) {
+ if (Math.random() < CL) {
designSpace.mutationAt(trailPoint.getLocation(), b);
} else {
- deltaxb = weight*(pcurrent_t.getLocation()[b]-pold_t.getLocation()[b])
- + c1*Math.random()*(pbest_t.getLocation()[b]-pcurrent_t.getLocation()[b])
- + c2*Math.random()*(gbest_t.getLocation()[b]-pcurrent_t.getLocation()[b]);
- //limitation for delta_x
- deltaxbm = 0.5*designSpace.getMagnitudeIn(b);
- if(deltaxb<-deltaxbm) {
+ deltaxb = weight * (pcurrent_t.getLocation()[b] - pold_t.getLocation()[b])
+ + c1 * Math.random() * (pbest_t.getLocation()[b] - pcurrent_t.getLocation()[b])
+ + c2 * Math.random() * (gbest_t.getLocation()[b] - pcurrent_t.getLocation()[b]);
+// limitation for delta_x
+ deltaxbm = 0.5 * designSpace.getMagnitudeIn(b);
+ if (deltaxb < -deltaxbm) {
deltaxb = -deltaxbm;
- } else if (deltaxb>deltaxbm) {
+ } else if (deltaxb > deltaxbm) {
deltaxb = deltaxbm;
}
- trailPoint.getLocation()[b] = pcurrent_t.getLocation()[b]+deltaxb;
+ trailPoint.getLocation()[b] = pcurrent_t.getLocation()[b] + deltaxb;
}
}
}
@@ -115,7 +117,6 @@ public class PSGTBehavior extends AbsGTBehavior {
Library.replace(qualityComparator, trailPoint, pbest_t);
pold_t.importLocation(pcurrent_t);
pcurrent_t.importLocation(trailPoint);
- }
+ }
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalElement.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalElement.java
index d3ffc25d323d..85e50c9f97f8 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalElement.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalElement.java
@@ -24,7 +24,7 @@ import net.adaptivebox.global.BasicBound;
public class EvalElement {
- //The weight for each response (target)
+ // The weight for each response (target)
private static final double weight = 1;
/**
* The expected range of the response value, forms the following objective:
@@ -44,26 +44,25 @@ public class EvalElement {
public BasicBound targetBound = new BasicBound();
public boolean isOptType() {
- return ((targetBound.minValue==BasicBound.MINDOUBLE&&targetBound.maxValue==BasicBound.MINDOUBLE)||
- (targetBound.minValue==BasicBound.MAXDOUBLE&&targetBound.maxValue==BasicBound.MAXDOUBLE));
+ return ((targetBound.minValue == BasicBound.MINDOUBLE && targetBound.maxValue == BasicBound.MINDOUBLE)
+ || (targetBound.minValue == BasicBound.MAXDOUBLE && targetBound.maxValue == BasicBound.MAXDOUBLE));
}
public double evaluateCONS(double targetValue) {
- if(targetValue<targetBound.minValue) {
- return weight*(targetBound.minValue-targetValue);
+ if (targetValue < targetBound.minValue) {
+ return weight * (targetBound.minValue - targetValue);
}
- if(targetValue>targetBound.maxValue) {
- return weight*(targetValue-targetBound.maxValue);
+ if (targetValue > targetBound.maxValue) {
+ return weight * (targetValue - targetBound.maxValue);
}
return 0;
}
public double evaluateOPTIM(double targetValue) {
- if(targetBound.maxValue==BasicBound.MINDOUBLE) { //min mode
- return weight*targetValue;
- } else { //max
- return -weight*targetValue;
+ if (targetBound.maxValue == BasicBound.MINDOUBLE) { // min mode
+ return weight * targetValue;
+ } else { // max
+ return -weight * targetValue;
}
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalStruct.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalStruct.java
index 15760e23a39e..526257544091 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalStruct.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/EvalStruct.java
@@ -37,21 +37,20 @@ public class EvalStruct {
evalElems[index] = dim;
}
- //convert response values into encoded information double[2]
+ // convert response values into encoded information double[2]
public void evaluate(double[] evalRes, double[] targetValues) {
evalRes[0] = evalRes[1] = 0;
- for(int i=0; i<evalElems.length; i++) {
+ for (int i = 0; i < evalElems.length; i++) {
if (evalElems[i].isOptType()) {
- //The objectives (OPTIM type)
- //The multi-objective will be translated into single-objective
+// The objectives (OPTIM type)
+// The multi-objective will be translated into single-objective
evalRes[1] += evalElems[i].evaluateOPTIM(targetValues[i]);
} else {
- //The constraints (CONS type)
- //If evalRes[0] equals to 0, then be a feasible point, i.e. satisfies
- // all the constraints
+// The constraints (CONS type)
+// If evalRes[0] equals to 0, then be a feasible point, i.e. satisfies
+// all the constraints
evalRes[0] += evalElems[i].evaluateCONS(targetValues[i]);
}
}
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/IEncodeEngine.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/IEncodeEngine.java
index dd8884b1e1c1..56f791c41ab8 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/IEncodeEngine.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/encode/IEncodeEngine.java
@@ -19,6 +19,6 @@
package net.adaptivebox.encode;
-public interface IEncodeEngine{
+public interface IEncodeEngine {
double[] getEncodeInfo();
}
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/BasicBound.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/BasicBound.java
index 31ab19f800e4..26e7b5ecbefb 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/BasicBound.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/BasicBound.java
@@ -20,11 +20,12 @@
package net.adaptivebox.global;
public class BasicBound {
- public static final double MINDOUBLE= -1e308;
- public static final double MAXDOUBLE= 1e308;
+ public static final double MINDOUBLE = -1e308;
+ public static final double MAXDOUBLE = 1e308;
public double minValue = MINDOUBLE;
public double maxValue = MAXDOUBLE;
+
public BasicBound() {
}
@@ -34,11 +35,11 @@ public class BasicBound {
}
public double getLength() {
- return Math.abs(maxValue-minValue);
+ return Math.abs(maxValue - minValue);
}
- public double boundAdjust(double value){
- if(value > maxValue) {
+ public double boundAdjust(double value) {
+ if (value > maxValue) {
value = maxValue;
} else if (value < minValue) {
value = minValue;
@@ -46,20 +47,18 @@ public class BasicBound {
return value;
}
- public double annulusAdjust (double value) {
- if(value > maxValue) {
- double extendsLen = (value-maxValue)%getLength();
- value = minValue+extendsLen;
+ public double annulusAdjust(double value) {
+ if (value > maxValue) {
+ double extendsLen = (value - maxValue) % getLength();
+ value = minValue + extendsLen;
} else if (value < minValue) {
- double extendsLen = (minValue-value)%getLength();
- value = maxValue-extendsLen;
+ double extendsLen = (minValue - value) % getLength();
+ value = maxValue - extendsLen;
}
return value;
}
-
-
- public double getRandomValue(){
+ public double getRandomValue() {
return RandomGenerator.doubleRangeRandom(minValue, maxValue);
}
}
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/RandomGenerator.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/RandomGenerator.java
index 18ced86335dc..4910de990091 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/RandomGenerator.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/global/RandomGenerator.java
@@ -25,63 +25,60 @@ package net.adaptivebox.global;
import java.util.Random;
public class RandomGenerator {
- /**
- * Pseudo-random number generator instance.
- */
- private static Random PRNG = new Random();
+ /**
+ * Pseudo-random number generator instance.
+ */
+ private static Random PRNG = new Random();
- /**
- * This function returns a random integer number between the lowLimit and
- * upLimit.
- *
- * @param lowLimit
- * lower limits upLimit The upper limits (between which the
- * random number is to be generated)
- * @return int return value Example: for find [0,1,2]
- */
- public static int intRangeRandom(int lowLimit, int upLimit) {
- int num = lowLimit + PRNG.nextInt(upLimit - lowLimit + 1);
- return num;
- }
-
- /**
- * This function returns a random float number between the lowLimit and
- * upLimit.
- *
- * @param lowLimit
- * lower limits upLimit The upper limits (between which the
- * random number is to be generated)
- * @return double return value
- */
- public static double doubleRangeRandom(double lowLimit, double upLimit) {
- double num = lowLimit + PRNG.nextDouble() * (upLimit - lowLimit);
- return num;
- }
+ /**
+ * This function returns a random integer number between the lowLimit and
+ * upLimit.
+ *
+ * @param lowLimit lower limits upLimit The upper limits (between which the
+ * random number is to be generated)
+ * @return int return value Example: for find [0,1,2]
+ */
+ public static int intRangeRandom(int lowLimit, int upLimit) {
+ int num = lowLimit + PRNG.nextInt(upLimit - lowLimit + 1);
+ return num;
+ }
- public static int[] randomSelection(int maxNum, int times) {
- if (maxNum < 0) {
- maxNum = 0;
- }
+ /**
+ * This function returns a random float number between the lowLimit and upLimit.
+ *
+ * @param lowLimit lower limits upLimit The upper limits (between which the
+ * random number is to be generated)
+ * @return double return value
+ */
+ public static double doubleRangeRandom(double lowLimit, double upLimit) {
+ double num = lowLimit + PRNG.nextDouble() * (upLimit - lowLimit);
+ return num;
+ }
- if (times < 0) {
- times = 0;
- }
+ public static int[] randomSelection(int maxNum, int times) {
+ if (maxNum < 0) {
+ maxNum = 0;
+ }
- int[] all = new int[maxNum];
- for (int i = 0; i < all.length; i++) {
- all[i] = i;
- }
+ if (times < 0) {
+ times = 0;
+ }
- /* https://en.wikipedia.org/wiki/Fisher%E2%80%93Yates_shuffle */
- int[] indices = new int[Math.min(maxNum, times)];
- for (int i = 0, j, value; i < indices.length; i++) {
- j = intRangeRandom(i, all.length - 1);
+ int[] all = new int[maxNum];
+ for (int i = 0; i < all.length; i++) {
+ all[i] = i;
+ }
- value = all[j];
- all[j] = all[i];
- indices[i] = all[i] = value;
- }
+ /* https://en.wikipedia.org/wiki/Fisher%E2%80%93Yates_shuffle */
+ int[] indices = new int[Math.min(maxNum, times)];
+ for (int i = 0, j, value; i < indices.length; i++) {
+ j = intRangeRandom(i, all.length - 1);
- return indices;
+ value = all[j];
+ all[j] = all[i];
+ indices[i] = all[i] = value;
}
+
+ return indices;
+ }
}
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/ACRComparator.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/ACRComparator.java
index 8e319d5dfa6a..22f4d4a32ba2 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/ACRComparator.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/ACRComparator.java
@@ -51,7 +51,8 @@ public class ACRComparator implements IGoodnessCompareEngine, IUpdateCycleEngine
public ACRComparator(Library lib, int T) {
socialPool = lib;
this.T = T;
- //set the (epsilon_t|t=0) as the maximum CONS value among the SearchPoints in the library
+// set the (epsilon_t|t=0) as the maximum CONS value among the SearchPoints in
+// the library
epsilon_t = lib.getExtremalVcon(true);
}
@@ -65,7 +66,7 @@ public class ACRComparator implements IGoodnessCompareEngine, IUpdateCycleEngine
}
public int compare(double[] fit1, double[] fit2) {
- if(Math.max(fit1[0], fit2[0])<=Math.max(0, epsilon_t)) { //epsilon>0
+ if (Math.max(fit1[0], fit2[0]) <= Math.max(0, epsilon_t)) { // epsilon>0
return compare(fit1[1], fit2[1]);
} else {
return compare(fit1[0], fit2[0]);
@@ -73,16 +74,16 @@ public class ACRComparator implements IGoodnessCompareEngine, IUpdateCycleEngine
}
public void updateCycle(int t) {
- //calculates the ratio
- double rn = (double)socialPool.getVconThanNum(epsilon_t)/(double)socialPool.getPopSize();
- if(t>TthR*T &&T!=-1) { //Forcing sub-rule
+// calculates the ratio
+ double rn = (double) socialPool.getVconThanNum(epsilon_t) / (double) socialPool.getPopSize();
+ if (t > TthR * T && T != -1) { // Forcing sub-rule
epsilon_t *= BETAF;
- } else { //Ratio-keeping sub-rules
- if(rn>RU) {
- epsilon_t *= BETAL; //Shrink
+ } else { // Ratio-keeping sub-rules
+ if (rn > RU) {
+ epsilon_t *= BETAL; // Shrink
}
- if(rn<RL) {
- epsilon_t *= BETAU; //Relax
+ if (rn < RL) {
+ epsilon_t *= BETAU; // Relax
}
}
}
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/BCHComparator.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/BCHComparator.java
index 66c25ed0b73d..74fd1b8481fe 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/BCHComparator.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/BCHComparator.java
@@ -28,17 +28,18 @@ package net.adaptivebox.goodness;
public class BCHComparator implements IGoodnessCompareEngine {
-/* check the magnitude of two array, the frontal is more important
- **/
+ /*
+ * check the magnitude of two array, the frontal is more important
+ **/
private static int compareArray(double[] fit1, double[] fit2) {
- for (int i=0; i<fit1.length; i++) {
- if (fit1[i]>fit2[i]) {
- return LARGER_THAN; //Large than
- } else if (fit1[i]<fit2[i]){
- return LESS_THAN; //Less than
+ for (int i = 0; i < fit1.length; i++) {
+ if (fit1[i] > fit2[i]) {
+ return LARGER_THAN; // Large than
+ } else if (fit1[i] < fit2[i]) {
+ return LESS_THAN; // Less than
}
}
- return IGoodnessCompareEngine.EQUAL_TO; //same
+ return IGoodnessCompareEngine.EQUAL_TO; // same
}
public int compare(double[] fit1, double[] fit2) {
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/IGoodnessCompareEngine.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/IGoodnessCompareEngine.java
index b345c1fafc46..70e227b5f610 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/IGoodnessCompareEngine.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/goodness/IGoodnessCompareEngine.java
@@ -29,10 +29,9 @@ public abstract interface IGoodnessCompareEngine {
int LESS_THAN = 0;
/**
- * check the magnitude of two IEncodeEngine
- * LARGER_THAN: goodness1 is worse than goodness2
- * LESS_THAN: goodness1 is better than goodness2
- * EQUAL_TO : goodness1 is equal to goodness2
+ * check the magnitude of two IEncodeEngine LARGER_THAN: goodness1 is worse than
+ * goodness2 LESS_THAN: goodness1 is better than goodness2 EQUAL_TO : goodness1
+ * is equal to goodness2
**/
int compare(double[] goodness1, double[] goodness2);
}
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/ILibEngine.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/ILibEngine.java
index af5a8b2a1323..b4787c30c66e 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/ILibEngine.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/ILibEngine.java
@@ -25,6 +25,3 @@ package net.adaptivebox.knowledge;
public interface ILibEngine {
void setLibrary(Library lib);
}
-
-
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/Library.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/Library.java
index 3a0f82659295..841e9102a1c0 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/Library.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/Library.java
@@ -33,9 +33,9 @@ public class Library {
private final SearchPoint[] libPoints;
private int gIndex = -1;
- public Library(int number, ProblemEncoder problemEncoder){
+ public Library(int number, ProblemEncoder problemEncoder) {
libPoints = new SearchPoint[number];
- for (int i=0; i<number; i++) {
+ for (int i = 0; i < number; i++) {
libPoints[i] = problemEncoder.getEncodedSearchPoint();
}
}
@@ -45,7 +45,7 @@ public class Library {
}
public void refreshGbest(IGoodnessCompareEngine qualityComparator) {
- gIndex = tournamentSelection(qualityComparator, getPopSize()-1, true);
+ gIndex = tournamentSelection(qualityComparator, getPopSize() - 1, true);
}
public int getPopSize() {
@@ -56,9 +56,11 @@ public class Library {
return libPoints[index];
}
- public static boolean replace(IGoodnessCompareEngine comparator, SearchPoint outPoint, SearchPoint tobeReplacedPoint) {
+ public static boolean replace(IGoodnessCompareEngine comparator, SearchPoint outPoint,
+ SearchPoint tobeReplacedPoint) {
boolean isBetter = false;
- if(comparator.compare(outPoint.getEncodeInfo(), tobeReplacedPoint.getEncodeInfo())<IGoodnessCompareEngine.LARGER_THAN) {
+ if (comparator.compare(outPoint.getEncodeInfo(),
+ tobeReplacedPoint.getEncodeInfo()) < IGoodnessCompareEngine.LARGER_THAN) {
tobeReplacedPoint.importPoint(outPoint);
isBetter = true;
}
@@ -68,9 +70,10 @@ public class Library {
public int tournamentSelection(IGoodnessCompareEngine comparator, int times, boolean isBetter) {
int[] indices = RandomGenerator.randomSelection(getPopSize(), times);
int currentIndex = indices[0];
- for (int i=1; i<indices.length; i++) {
- int compareValue = comparator.compare(libPoints[indices[i]].getEncodeInfo(), libPoints[currentIndex].getEncodeInfo());
- if (isBetter == (compareValue<IGoodnessCompareEngine.LARGER_THAN)) {
+ for (int i = 1; i < indices.length; i++) {
+ int compareValue = comparator.compare(libPoints[indices[i]].getEncodeInfo(),
+ libPoints[currentIndex].getEncodeInfo());
+ if (isBetter == (compareValue < IGoodnessCompareEngine.LARGER_THAN)) {
currentIndex = indices[i];
}
}
@@ -78,9 +81,9 @@ public class Library {
}
public double getExtremalVcon(boolean isMAX) {
- double val=BasicBound.MINDOUBLE;
- for(int i=0; i<libPoints.length; i++) {
- if(libPoints[i].getEncodeInfo()[0]>val==isMAX) {
+ double val = BasicBound.MINDOUBLE;
+ for (int i = 0; i < libPoints.length; i++) {
+ if (libPoints[i].getEncodeInfo()[0] > val == isMAX) {
val = libPoints[i].getEncodeInfo()[0];
}
}
@@ -88,9 +91,9 @@ public class Library {
}
public int getVconThanNum(double allowedCons) {
- int num=0;
- for(int i=0; i<libPoints.length; i++) {
- if(libPoints[i].getEncodeInfo()[0]<=allowedCons) {
+ int num = 0;
+ for (int i = 0; i < libPoints.length; i++) {
+ if (libPoints[i].getEncodeInfo()[0] <= allowedCons) {
num++;
}
}
@@ -98,6 +101,3 @@ public class Library {
}
}
-
-
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/SearchPoint.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/SearchPoint.java
index b1b96163465f..eb0441648781 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/SearchPoint.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/knowledge/SearchPoint.java
@@ -24,15 +24,16 @@ import net.adaptivebox.global.BasicBound;
import net.adaptivebox.space.BasicPoint;
public class SearchPoint extends BasicPoint implements IEncodeEngine {
- //store the encode information for goodness evaluation
- //encodeInfo[0]: the sum of constraints (if it equals to 0, then be a feasible point)
- //encodeInfo[1]: the value of objective function
+ // store the encode information for goodness evaluation
+ // encodeInfo[0]: the sum of constraints (if it equals to 0, then be a feasible
+ // point)
+ // encodeInfo[1]: the value of objective function
private final double[] encodeInfo = new double[2];
private double objectiveValue;
public SearchPoint(int dim) {
super(dim);
- for(int i=0; i<encodeInfo.length; i++) {
+ for (int i = 0; i < encodeInfo.length; i++) {
encodeInfo[i] = BasicBound.MAXDOUBLE;
}
}
@@ -49,7 +50,7 @@ public class SearchPoint extends BasicPoint implements IEncodeEngine {
importEncodeInfo(point.getEncodeInfo());
}
- //Replace self by given point
+ // Replace self by given point
public void importPoint(SearchPoint point) {
importLocation(point);
importEncodeInfo(point);
@@ -57,15 +58,15 @@ public class SearchPoint extends BasicPoint implements IEncodeEngine {
}
public double getObjectiveValue() {
- return objectiveValue;
+ return objectiveValue;
}
public void setObjectiveValue(double objectiveValue) {
- this.objectiveValue = objectiveValue;
+ this.objectiveValue = objectiveValue;
}
public boolean isFeasible() {
- return encodeInfo[0] == 0; //no constraint violations
+ return encodeInfo[0] == 0; // no constraint violations
}
} \ No newline at end of file
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/problem/ProblemEncoder.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/problem/ProblemEncoder.java
index 58b7ab4c907d..c6a25e93c8f1 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/problem/ProblemEncoder.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/problem/ProblemEncoder.java
@@ -34,11 +34,11 @@ import net.adaptivebox.space.DesignDim;
import net.adaptivebox.space.DesignSpace;
public abstract class ProblemEncoder {
- //Store the calculated results for the responses
- private final double[] tempResponseSet; //temp values
- private final double[] tempLocation; //temp values
+ // Store the calculated results for the responses
+ private final double[] tempResponseSet; // temp values
+ private final double[] tempLocation; // temp values
- //the search space (S)
+ // the search space (S)
private final DesignSpace designSpace;
// For evaluate the response vector into encoded vector double[2]
@@ -55,27 +55,27 @@ public abstract class ProblemEncoder {
return designSpace;
}
- //set the default information for each dimension of search space (S)
- protected void setDefaultXAt(int i, double min, double max, double grain) {
+ // set the default information for each dimension of search space (S)
+ protected void setDefaultXAt(int i, double min, double max, double grain) {
DesignDim dd = new DesignDim();
dd.grain = grain;
dd.paramBound = new BasicBound(min, max);
designSpace.setElemAt(dd, i);
}
- //set the default information for evaluation each response
- protected void setDefaultYAt(int i, double min, double max) {
+ // set the default information for evaluation each response
+ protected void setDefaultYAt(int i, double min, double max) {
EvalElement ee = new EvalElement();
ee.targetBound = new BasicBound(min, max);
evalStruct.setElemAt(ee, i);
}
- //get a fresh point
+ // get a fresh point
public SearchPoint getFreshSearchPoint() {
return new SearchPoint(designSpace.getDimension());
}
- //get an encoded point
+ // get an encoded point
public SearchPoint getEncodedSearchPoint() {
SearchPoint point = getFreshSearchPoint();
designSpace.initializeGene(point.getLocation());
@@ -83,26 +83,25 @@ public abstract class ProblemEncoder {
return point;
}
- //evaluate the point into encoded information
+ // evaluate the point into encoded information
public void evaluate(SearchPoint point) {
- //copy to temp point
+// copy to temp point
System.arraycopy(point.getLocation(), 0, this.tempLocation, 0, tempLocation.length);
- //mapping the temp point to original search space S
+// mapping the temp point to original search space S
designSpace.getMappingPoint(tempLocation);
- //calculate based on the temp point
+// calculate based on the temp point
calcTargets(tempResponseSet, tempLocation);
evalStruct.evaluate(point.getEncodeInfo(), tempResponseSet);
point.setObjectiveValue(tempResponseSet[0]);
}
- //calculate each response, must be implemented
+ // calculate each response, must be implemented
abstract protected double calcTargetAt(int index, double[] VX);
// calculate all the responses VY[] based on given point VX[]
private void calcTargets(double[] VY, double[] VX) {
- for(int i=0; i<VY.length; i++) {
+ for (int i = 0; i < VY.length; i++) {
VY[i] = calcTargetAt(i, VX);
}
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/sco/SCAgent.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/sco/SCAgent.java
index 3de78939cb10..7785069e86bc 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/sco/SCAgent.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/sco/SCAgent.java
@@ -43,21 +43,23 @@ import net.adaptivebox.knowledge.SearchPoint;
public class SCAgent {
- //Describes the problem to be solved (encode the point into intermediate information)
+ // Describes the problem to be solved (encode the point into intermediate
+ // information)
private ProblemEncoder problemEncoder;
- //Forms the goodness landscape
+ // Forms the goodness landscape
private IGoodnessCompareEngine specComparator;
- //the coefficients of SCAgent
+ // the coefficients of SCAgent
private static final int TaoB = 2;
- //The early version set TaoW as the size of external library (NL), but 4 is often enough
+ // The early version set TaoW as the size of external library (NL), but 4 is
+ // often enough
private static final int TaoW = 4;
- //The referred external library
+ // The referred external library
private Library externalLib;
- //store the point that generated in current learning cycle
+ // store the point that generated in current learning cycle
private SearchPoint trailPoint;
- //the own memory: store the point that generated in last learning cycle
+ // the own memory: store the point that generated in last learning cycle
private SearchPoint pcurrent_t;
public void setExternalLib(Library lib) {
@@ -75,9 +77,9 @@ public class SCAgent {
}
public SearchPoint generatePoint() {
- //generate a new point
+// generate a new point
generatePoint(trailPoint);
- //evaluate the generated point
+// evaluate the generated point
problemEncoder.evaluate(trailPoint);
return trailPoint;
}
@@ -85,49 +87,50 @@ public class SCAgent {
private void generatePoint(ILocationEngine tempPoint) {
SearchPoint Xmodel, Xrefer, libBPoint;
- // choose Selects a better point (libBPoint) from externalLib (L) based
- // on tournament selection
+// choose Selects a better point (libBPoint) from externalLib (L) based
+// on tournament selection
int xb = externalLib.tournamentSelection(specComparator, TaoB, true);
libBPoint = externalLib.getSelectedPoint(xb);
- // Compares pcurrent_t with libBPoint
- // The better one becomes model point (Xmodel)
- // The worse one becomes refer point (Xrefer)
- if(specComparator.compare(pcurrent_t.getEncodeInfo(), libBPoint.getEncodeInfo())==IGoodnessCompareEngine.LARGER_THAN) {
+// Compares pcurrent_t with libBPoint
+// The better one becomes model point (Xmodel)
+// The worse one becomes refer point (Xrefer)
+ if (specComparator.compare(pcurrent_t.getEncodeInfo(),
+ libBPoint.getEncodeInfo()) == IGoodnessCompareEngine.LARGER_THAN) {
Xmodel = libBPoint;
Xrefer = pcurrent_t;
} else {
Xmodel = pcurrent_t;
Xrefer = libBPoint;
}
- // observational learning: generates a new point near the model point, which
- // the variation range is decided by the difference of Xmodel and Xrefer
+// observational learning: generates a new point near the model point, which
+// the variation range is decided by the difference of Xmodel and Xrefer
inferPoint(tempPoint, Xmodel, Xrefer, problemEncoder.getDesignSpace());
}
- //1. Update the current point into the external library
- //2. Replace the current point by the generated point
+ // 1. Update the current point into the external library
+ // 2. Replace the current point by the generated point
public void updateInfo() {
- //Selects a bad point kw from TaoW points in Library
+// Selects a bad point kw from TaoW points in Library
int xw = externalLib.tournamentSelection(specComparator, TaoW, false);
- //Replaces kw with pcurrent_t
+// Replaces kw with pcurrent_t
externalLib.getSelectedPoint(xw).importPoint(pcurrent_t);
- //Replaces pcurrent_t (x(t)) with trailPoint (x(t+1))
+// Replaces pcurrent_t (x(t)) with trailPoint (x(t+1))
pcurrent_t.importPoint(trailPoint);
- }
-
- // 1---model point, 2---refer point
- private boolean inferPoint(ILocationEngine newPoint, ILocationEngine point1,ILocationEngine point2, DesignSpace space){
- double[] newLoc = newPoint.getLocation();
- double[] real1 = point1.getLocation();
- double[] real2 = point2.getLocation();
+ }
- for (int i=0; i<newLoc.length; i++) {
- newLoc[i] = real1[i]*2-real2[i];
- //boundary handling
- newLoc[i] = space.boundAdjustAt(newLoc[i], i);
- newLoc[i] = RandomGenerator.doubleRangeRandom(newLoc[i], real2[i]);
- }
- return true;
- }
+ // 1---model point, 2---refer point
+ private boolean inferPoint(ILocationEngine newPoint, ILocationEngine point1, ILocationEngine point2,
+ DesignSpace space) {
+ double[] newLoc = newPoint.getLocation();
+ double[] real1 = point1.getLocation();
+ double[] real2 = point2.getLocation();
+
+ for (int i = 0; i < newLoc.length; i++) {
+ newLoc[i] = real1[i] * 2 - real2[i];
+ // boundary handling
+ newLoc[i] = space.boundAdjustAt(newLoc[i], i);
+ newLoc[i] = RandomGenerator.doubleRangeRandom(newLoc[i], real2[i]);
+ }
+ return true;
+ }
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/BasicPoint.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/BasicPoint.java
index 35f5f79ce23d..9f6c2ec01de9 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/BasicPoint.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/BasicPoint.java
@@ -21,7 +21,7 @@
package net.adaptivebox.space;
public class BasicPoint implements ILocationEngine {
- //store the location information in the search space (S)
+ // store the location information in the search space (S)
private final double[] location;
public BasicPoint(int dim) {
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignDim.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignDim.java
index ce6790402a4e..9fbe937e1dff 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignDim.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignDim.java
@@ -27,21 +27,20 @@ public class DesignDim {
// To discrete space with the given step. For example, for an integer variable,
// The grain value can be set as 1.
public double grain = 0;
- public BasicBound paramBound = new BasicBound(); //the range of a parameter
+ public BasicBound paramBound = new BasicBound(); // the range of a parameter
public boolean isDiscrete() {
- return grain!=0;
+ return grain != 0;
}
public double getGrainedValue(double value) {
- if(grain==0) {
+ if (grain == 0) {
return value;
- } else if(grain>0) {
- return paramBound.minValue+Math.rint((value-paramBound.minValue)/grain)*grain;
+ } else if (grain > 0) {
+ return paramBound.minValue + Math.rint((value - paramBound.minValue) / grain) * grain;
} else {
- return paramBound.maxValue-Math.rint((paramBound.maxValue-value)/grain)*grain;
+ return paramBound.maxValue - Math.rint((paramBound.maxValue - value) / grain) * grain;
}
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignSpace.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignSpace.java
index 7e7629af8e10..0c28e0006e1b 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignSpace.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/DesignSpace.java
@@ -27,59 +27,48 @@
package net.adaptivebox.space;
public class DesignSpace {
- //The information of all the dimension
+ // The information of all the dimension
private DesignDim[] dimProps;
public DesignSpace(int dim) {
dimProps = new DesignDim[dim];
}
-
-
public void setElemAt(DesignDim elem, int index) {
dimProps[index] = elem;
}
public int getDimension() {
- if (dimProps==null) {
+ if (dimProps == null) {
return -1;
}
return dimProps.length;
}
- public double boundAdjustAt(double val, int dim){
+ public double boundAdjustAt(double val, int dim) {
return dimProps[dim].paramBound.boundAdjust(val);
}
- public void mutationAt(double[] location, int i){
+ public void mutationAt(double[] location, int i) {
location[i] = dimProps[i].paramBound.getRandomValue();
}
-
-
-
-
-
-
public double getMagnitudeIn(int dimensionIndex) {
return dimProps[dimensionIndex].paramBound.getLength();
}
-
-
-
- public void initializeGene(double[] tempX){
- for(int i=0;i<tempX.length;i++) tempX[i] = dimProps[i].paramBound.getRandomValue(); //Global.RandomGenerator.doubleRangeRandom(9.8, 10);
+ public void initializeGene(double[] tempX) {
+ for (int i = 0; i < tempX.length; i++)
+ tempX[i] = dimProps[i].paramBound.getRandomValue(); // Global.RandomGenerator.doubleRangeRandom(9.8, 10);
}
public void getMappingPoint(double[] point) {
- for(int i=0; i<getDimension(); i++) {
+ for (int i = 0; i < getDimension(); i++) {
point[i] = dimProps[i].paramBound.annulusAdjust(point[i]);
- if(dimProps[i].isDiscrete()) {
+ if (dimProps[i].isDiscrete()) {
point[i] = dimProps[i].getGrainedValue(point[i]);
}
}
}
}
-
diff --git a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/ILocationEngine.java b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/ILocationEngine.java
index 66ab92a67ecf..6b839df6e43d 100644
--- a/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/ILocationEngine.java
+++ b/nlpsolver/ThirdParty/EvolutionarySolver/src/net/adaptivebox/space/ILocationEngine.java
@@ -20,6 +20,6 @@
package net.adaptivebox.space;
-public interface ILocationEngine{
+public interface ILocationEngine {
double[] getLocation();
}