You could do it with Weka.

You would have to implement a Distance Function, and pass it to the Hierarchical Clusterer using the `setDistanceFunction(DistanceFunction distanceFunction)`

method.

The other available clusterers in Weka are: Cobweb, EM, FarthestFirst, FilteredClusterer, MakeDensityBasedClusterer, RandomizableClusterer, RandomizableDensityBasedClusterer, RandomizableSingleClustererEnhancer, SimpleKMeans, SingleClustererEnhancer.

An example distance function, from the NormalizableDistance class:

```
/** Index in ranges for MIN. */
public static final int R_MIN = 0;
/** Index in ranges for MAX. */
public static final int R_MAX = 1;
/** Index in ranges for WIDTH. */
public static final int R_WIDTH = 2;
/** the instances used internally. */
protected Instances m_Data = null;
/** True if normalization is turned off (default false).*/
protected boolean m_DontNormalize = false;
/** The range of the attributes. */
protected double[][] m_Ranges;
/** The range of attributes to use for calculating the distance. */
protected Range m_AttributeIndices = new Range("first-last");
/** The boolean flags, whether an attribute will be used or not. */
protected boolean[] m_ActiveIndices;
/** Whether all the necessary preparations have been done. */
protected boolean m_Validated;
public double distance(Instance first, Instance second, double cutOffValue, PerformanceStats stats) {
double distance = 0;
int firstI, secondI;
int firstNumValues = first.numValues();
int secondNumValues = second.numValues();
int numAttributes = m_Data.numAttributes();
int classIndex = m_Data.classIndex();
validate();
for (int p1 = 0, p2 = 0; p1 < firstNumValues || p2 < secondNumValues; ) {
if (p1 >= firstNumValues)
firstI = numAttributes;
else
firstI = first.index(p1);
if (p2 >= secondNumValues)
secondI = numAttributes;
else
secondI = second.index(p2);
if (firstI == classIndex) {
p1++;
continue;
}
if ((firstI < numAttributes) && !m_ActiveIndices[firstI]) {
p1++;
continue;
}
if (secondI == classIndex) {
p2++;
continue;
}
if ((secondI < numAttributes) && !m_ActiveIndices[secondI]) {
p2++;
continue;
}
double diff;
if (firstI == secondI) {
diff = difference(firstI,
first.valueSparse(p1),
second.valueSparse(p2));
p1++;
p2++;
}
else if (firstI > secondI) {
diff = difference(secondI,
0, second.valueSparse(p2));
p2++;
}
else {
diff = difference(firstI,
first.valueSparse(p1), 0);
p1++;
}
if (stats != null)
stats.incrCoordCount();
distance = updateDistance(distance, diff);
if (distance > cutOffValue)
return Double.POSITIVE_INFINITY;
}
return distance;
}
```

Shows that you can treat separately the various dimensions (that are called attributes in Weka). So you can define a different distance for each dimension/attribute.

About the business rules to avoid clustering together some instances. I think that you can create a distance function that returns `Double.positiveInfinity`

when the business rules are not satisfied.