SCIENTIA SINICA Informationis, Volume 49 , Issue 12 : 1545-1558(2019) https://doi.org/10.1360/SSI-2019-0108

A general design method for artificial system based on multi-living agent theory

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  • ReceivedMay 30, 2019
  • AcceptedOct 25, 2019
  • PublishedDec 16, 2019


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  • Figure 1

    The framework of terminal defense system based on MLA

  • Table 1   Destruction parameter index of ground attack ammunition
    Index Antiaircraft gun Short-range missile
    Attack range $1.5\sim0.2$ km $4\sim0.3$ km
    Angle of site 15$^{\circ}\sim70^{\circ}$ 15$^{\circ}\sim40^{\circ}$
  • Table 2   The definition of probability of unit condition
    Symbol Expression
    $P_1$ Effectual shooting probability
    $P_2$ Kill probability
    $P_3$ Detection probability
    $P_4$ Successful convert probability from detection to tracking
    $P_5$ Anti interference probability of searching
    $P_6$ Anti interference probability of tracking
    $P_7$ Correct computation probability of firing data
    $P_8$ Correct command execution probability of firing system
    $P_9$ Correct administrator command receiving probability of firing system
    $P_{10}$ Others