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A Prediction of Terrorist Distribution Range Radius and Elapsing Time: A Case Study in Southern Parts of Thailand

机译:恐怖主义分布范围半径和消失时间的预测:以泰国南部为例

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Recently, terrorist or rebel activity is experienced in many parts of the world. The objectives of the research are to design and develop an accurate predicting the distribution range radius and elapsing time of a terrorist situation. An Analytical Network Process (ANP) is used to classify salient quantitative and qualitative factors of the unsettled area, or terrorist behaviour. Then, the resulting Artificial Neural Networks (ANNs) are used to set up initial factor weights. The ANNs model is trained and tested for verification and validation against a historical data set. Improvised Explosive Device (IED) events from 2007 to 2011 in the capital district of Yala province, the southern part of Thailand, are used for testing the experiment. The proposed decision support methodology emerges as capable of predicting the distribution range radius and the elapsing time from the previous incident. The ANP technique can analyse and weight the complex quantitative and qualitative criteria to yield basic inputs to the specified ANNs. With initial set up architecture by the ANP weighting results, the contribution of this research lies in the proposed ANNs' capacity to predict a terrorist incident. Further, assessment of the Explosive Ordnance Disposal Mobile Unit (EODMU) is simulated by using the prediction results from the case study. As a result, during 2007 to 2012, with more opportunity to detect and defeat the next IED terrorist incident, the radius risk operation area of the capital district of Yala province can be reduced from some 8.9 km. to 5 km. By applying the model, the Thai Government can focus on a smaller area, resulting in reduced expenditure of military assets with no cost in additional casualties.
机译:最近,世界许多地方都经历了恐怖活动或叛乱活动。该研究的目的是设计和开发一种能够准确预测恐怖袭击情况的分布范围半径和经过时间的方法。分析网络过程(ANP)用于对未解决地区或恐怖行为的重要定量和定性因素进行分类。然后,使用所得的人工神经网络(ANN)设置初始因子权重。人工神经网络模型经过培训和测试,可以针对历史数据集进行验证和确认。实验使用2007年至2011年在泰国南部亚拉省首府的简易爆炸装置(IED)事件进行。提出的决策支持方法应运而生,因为它能够预测上一次事件的分布范围半径和经过时间。 ANP技术可以分析和加权复杂的定量和定性标准,以产生指定ANN的基本输入。根据ANP加权结果建立的初始架构,该研究的贡献在于拟议的ANN预测恐怖事件的能力。此外,使用案例研究的预测结果模拟了爆炸物处置移动单元(EODMU)的评估。结果,在2007年至2012年期间,有了更多发现并击败下一场IED恐怖事件的机会,也可以将亚拉省首府半径风险操作区从8.9 km减少到最小。至5公里。通过应用该模型,泰国政府可以将注意力集中在较小的区域上,从而减少了军事资产的支出,而没有增加人员伤亡的成本。

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