In this paper we simulate an ensemble of cooperating, mobile sensing agents that implement the cyclic stochastic optimization (CSO) algorithm in an attempt to survey and track multiple targets. In the CSO algorithm proposed, each agent uses its sensed measurements, its shared information, and its predictions of others' future motion to decide on its next action. This decision is selected to minimize a loss function that decreases as the uncertainty in the targets' state estimates decreases. Only noisy measurements of this loss function are available to each agent, and in this study, each agent attempts to minimize this function by calculating its stochastic gradient. This paper examines, via simulation-based experiments, the implications and applicability of CSO convergence in three dimensions.
翻译:在本文中,我们模拟了一个合作、移动感应剂的组合体,用于实施循环随机优化(CSO)算法,以调查并跟踪多重目标。在拟议的民间社会组织算法中,每个机构都使用其感知测量、共享的信息以及其对他人未来动议的预测来决定其下一步行动。选择这一决定是为了尽量减少损失功能,这种损失功能随着目标国家估计数的不确定性减少而减少。每个机构只能得到关于这一损失功能的噪音测量,在本研究中,每个机构都试图通过计算其随机梯度来尽量减少这一功能。本文通过模拟实验来审查民间社会组织在三个方面趋同的影响和适用性。