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An improved simulated annealing algorithm based on residual network for permutation flow shop scheduling

机译:一种改进的基于残余网络的置换流楼宇调度的模拟退火算法

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The permutation flow shop scheduling problem (PFSP), which is one of the most important scheduling types, is widespread in the modern industries. With the increase of scheduling scale, the difficulty and computation time of solving the problem will increase exponentially. Adding the knowledge to intelligent algorithms is a good way to solve the complex and difficult scheduling problems in reasonable time. To deal with the complex PFSPs, this paper proposes an improved simulated annealing (SA) algorithm based on residual network (SARes). First, this paper defines the neighborhood of the PFSP and divides its key blocks. Second, the Residual Network (ResNet) is used to extract and train the features of key blocks. And, the trained parameters are stored in the SA algorithm to improve its performance. Afterwards, some key operators, including the initial temperature setting and temperature attenuation function of SA algorithm, are also modified. After every new solution is generated, the parameters trained by the ResNet are used for fast ergodic search until the local optimal solution found in the current neighborhood. Finally, the most famous benchmarks including part of TA benchmark are selected to verify the performance of the proposed SARes algorithm, and the comparisons with the-state-of-art methods are also conducted. The experimental results show that the proposed method has achieved good results by comparing with other algorithms. This paper also conducts experiments on network structure design, algorithm parameter selection, CPU time and other problems, and verifies the advantages of SARes algorithm from the aspects of stability and efficiency.
机译:作为最重要的调度类型之一,置换流程店调度问题(PFSP)是在现代行业中的广泛普遍存在。随着调度规模的增加,解决问题的难度和计算时间将是指数增长的。将知识添加到智能算法中是解决合理时间内复杂和困难的调度问题的好方法。为了处理复杂的PFSP,本文提出了一种基于残余网络(SARES)的改进的模拟退火(SA)算法。首先,本文定义了PFSP的邻域并划分其密钥块。其次,剩余网络(Reset)用于提取和培训密钥块的特征。并且,培训的参数存储在SA算法中以提高其性能。然后,还修改了一些关键操作员,包括SA算法的初始温度设定和温度衰减功能,也被修改。在生成每个新解决方案之后,Reset培训的参数用于快速ergodic搜索,直到当前邻域中的本地最佳解决方案。最后,选择包括TA基准的最着名的基准,以验证所提出的SARES算法的性能,也进行了与最先进的方法的比较。实验结果表明,该方法通过与其他算法进行比较实现了良好的效果。本文还对网络结构设计,算法参数选择,CPU时间和其他问题进行了实验,并从稳定性和效率方面验证了SARES算法的优势。

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