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Application of a CMAC neural network to the control of a parallel hybrid-electric propulsion system for a small unmanned aerial vehicle

机译:CMAC神经网络在小型无人机并联混合动力推进系统控制中的应用

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Optimizing and controlling the energy use of a hybrid-electric propulsion system is difficult due to the interaction of nonlinear mechanical, thermodynamic, and electromechanical devices. An optimization routine for the energy use of a parallel hybrid-electric propulsion system for a small unmanned aerial vehicle (UAV), the application of a cerebellar model arithmetic computer (CMAC) neural network to approximate the optimization results and control the hybrid-electric system, and simulation results are presented. The small hybrid-electric UAV is intended for military and homeland security missions involving intelligence, surveillance, or reconnaissance (ISR). The flexible optimization routine allows relative importance to be assigned between the use of gasoline, electricity, and recharging. The CMAC controller saves on the required memory compared to a look-up table by two orders of magnitude. The hybrid-electric UAV with the CMAC controller uses 37.8% less energy than a two-stroke gasoline-powered UAV during a three-hour ISR mission.
机译:由于非线性机械,热力学和机电设备之间的相互作用,优化和控制混合动力推进系统的能源使用非常困难。小型无人飞行器(UAV)并联混合动力推进系统能源使用的优化例程,小脑模型算术计算机(CMAC)神经网络的应用,以估算优化结果并控制混合动力系统,并给出了仿真结果。小型混合动力无人机用于执行情报,监视或侦察(ISR)的军事和国土安全任务。灵活的优化程序允许在汽油,电力和充电之间分配相对重要性。与查找表相比,CMAC控制器节省了两个数量级的所需内存。在3小时的ISR任务中,带CMAC控制器的混合动力无人机比两冲程汽油动力无人机消耗的能源少37.8%。

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