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A Pythagorean-Type Fuzzy Deep Denoising Autoencoder for Industrial Accident Early Warning

机译:一种毕达哥拉斯式模糊深度去噪自动编码器,用于工业事故预警

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摘要

Early warning is crucial for preventing industrial accidents and mitigating damage, but current methods are often time-consuming, error-prone, and incompetent to deal with uncertainty. This paper presents a fuzzy deep neural network for early warning of industrial accidents, which equips the classical deep denoising autoencoder (DDAE) model with Pythagorean-type fuzzy parameters in order to enhance the model's representation ability and robustness. To efficiently train the fuzzy deep model, we propose a hybrid algorithm combining Hessian-free optimization and biogeography-based optimization metaheuristic to balance global search and local search. Experiments on datasets from several industrial zones in China show that the proposed Pythagorean-type fuzzy DDAE (PFDDAE) can achieve much higher accuracy of accident risk classification than the classical DDAE and the fuzzy DDAE using regular fuzzy parameters, and the proposed hybrid learning algorithm exhibits significant performance advantage over some other learning algorithms in training PFDDAE. In particular, a test on the 2014 Kunshan aluminum dust explosion accident shows that the deep learning model would be very likely to prevent the accident if it was adopted in advance.
机译:预警对于防止工业事故和减轻损害至关重要,但是当前的方法通常很耗时,容易出错并且无法处理不确定性。本文提出了一种用于工业事故预警的模糊深度神经网络,为经典深度降噪自动编码器(DDAE)模型配备了毕达哥拉斯式模糊参数,以增强模型的表示能力和鲁棒性。为了有效地训练模糊深度模型,我们提出了一种混合算法,将无Hessian优化和基于生物地理的优化元启发式算法相结合,以平衡全局搜索和局部搜索。对中国多个工业区的数据集进行的实验表明,提出的毕达哥拉斯式模糊DDAE(PFDDAE)可以比经典DDAE和使用常规模糊参数的模糊DDAE达到更高的事故风险分类精度,并且该混合学习算法展示了在训练PFDDAE方面比其他一些学习算法具有显着的性能优势。特别是,对2014年昆山铝粉尘爆炸事故的测试表明,如果提前采用深度学习模型,很可能会预防该事故。

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