Networked groups of sensors that detect Chemical, Biological, and
Radiological (CBR) threats are being developed to defend cities and
military bases. Due to the high cost and maintenance of these sensors,
the number of sensors deployed is limited. It is vital for the sensors to
be deployed in optimal locations for these sensors to be effectively used
to analyze the scope of the threat. A genetic algorithm, along with
instantaneous plume prediction capabilities meets these goals. An
analyzer's time dependant plumes, upwind danger zone, and sensor
capabilities are used to determine the fitness of sensor networks
generated by the genetic algorithm.