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A Kill-Assessment Technique Using Hypothesis Testing and Kalman Filter  

Kim, Ho-Jeong (ADD)
Lee, Dong-Gwan (ADD)
Publication Information
Journal of the Korea Institute of Military Science and Technology / v.9, no.4, 2006 , pp. 5-14 More about this Journal
Abstract
The correct and opportune decision of reengaging the intercepted target is required in order to enhance the engagement performance of the surface to air missile systems that has the ability to defense or attack against various targets at the same time. The engagement efficiency and success of these systems will be largely enhanced by assigning quickly its system resources to the intercepted target and minimizing the waste of system resources for the target which is not able to attack any more. The kill-assessment algorithm has to be able to evaluate automatically whether various targets intercepted by missiles are killed or not on the basis of the reasonable confidence level. The definition of kill assessment is discussed and the kill assessment algorithm is designed reliably by using Kalman filter and a probability theory. Finally its performance is evaluated and analyzed by the Monte Carlo simulation.
Keywords
Kill-Assessment; Surface to Air Missile System; Kalman Filter; Monte Carlo Simulation;
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