4.5 Article

An Improved Equilibrium Optimizer Algorithm and Its Application in LSTM Neural Network

期刊

SYMMETRY-BASEL
卷 13, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/sym13091706

关键词

equilibrium optimizer algorithm; adaptive inertia weights; IEO-LSTM; oil layer prediction

资金

  1. National Natural Science Foundation of China [U1813222, 42075129]
  2. Hebei Province Natural Science Foundation [E2021202179]
  3. Key Research and Development Project from Hebei Province [19210404D, 20351802D, 21351803D]

向作者/读者索取更多资源

An improved Equilibrium Optimizer (IEO) algorithm, with enhanced global search capability through adaptive weights and convergence factors, showed superior performance on 25 benchmark functions and oil layer prediction using LSTM networks. The results indicated that the proposed IEO model outperformed popular optimization algorithms like PSO and GA in terms of accuracy and error metrics.
An improved equilibrium optimizer (EO) algorithm is proposed in this paper to address premature and slow convergence. Firstly, a highly stochastic chaotic mechanism is adopted to initialize the population for range expansion. Secondly, the capability to conduct global search to jump out of local optima is enhanced by assigning adaptive weights and setting adaptive convergence factors. In addition 25 classical benchmark functions are used to validate the algorithm. As revealed by the analysis of the accuracy, speed, and stability of convergence, the IEO algorithm proposed in this paper significantly outperforms other meta-heuristic algorithms. In practice, the distribution is asymmetric because most logging data are unlabeled. Traditional classification models have difficulty in accurately predicting the location of oil layer. In this paper, the oil layers related to oil exploration are predicted using long short-term memory (LSTM) networks. Due to the large amount of data used, however, it is difficult to adjust the parameters. For this reason, an improved equilibrium optimizer algorithm (IEO) is applied to optimize the parameters of LSTM for improved performance, while the effective IEO-LSTM is applied for oil layer prediction. As indicated by the results, the proposed model outperforms the current popular optimization algorithms including particle swarm algorithm PSO and genetic algorithm GA in terms of accuracy, absolute error, root mean square error and mean absolute error.

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