一种基于BP神经网络的火灾救援计划生成算法

Cuicui Zhang, Shujuan Ji, Yongquan Liang, X. Lv
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摘要

BP神经网络在生成火灾救援计划时的输出代表了各种救援资源的数量,这些资源通常被称为火灾救援计划。本文假设总损失为预期损失(即。最佳救援方案造成的损失为零,救援资源造成的损失主要是由于资源短缺造成的火灾损失,资源过剩造成的资源浪费损失或为零。一个救援计划的总损失是所有救援资源损失的总和。由于难以得到预期的救援计划,基于BP神经网络的火灾救援计划生成算法的目的是使得到的救援计划的总损失尽可能小。本文首先分析了传统BP神经网络的特点,得出其不能保证救援计划的总损失尽可能小的结论。为此,本文提出了一种改进的BP神经网络生成救援方案。实验结果表明,改进后的系统可以达到将总损耗降到最低的目的。
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A fire rescue plan generation algorithm based on BP neural network
The outputs of the BP neural network when used to generate fire rescue plan represent the amounts of various rescue resources which are generally called fire rescue plan. This paper assumes that the total losses the expected(i.e. the best) rescue plan causes is zero, and that the losses a rescue resource causes are mainly fire losses due to its shortage, resource waste losses due to its surplus or zero. The total losses of a rescue plan are the sum of the losses of all rescue resources. Because it is difficult to get the expected rescue plan, the purpose of the fire rescue plan generation algorithm based on BP neural network is to make the total losses of the obtained rescue plans as little as possible. This paper first analyzes the characteristics of the traditional BP neural network and concludes that it can't guarantee the total losses of a rescue plan as little as possible. Therefore, this paper puts forward an improved BP neural network to generate rescue plan. Experimental results show that the improvement can realize the purpose of decreasing the total losses to the lowest point.
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