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冠状病毒优化算法:基于 COVID-19 传播模型的生物启发式元启发算法。

Coronavirus Optimization Algorithm: A Bioinspired Metaheuristic Based on the COVID-19 Propagation Model.

机构信息

Data Science and Big Data Lab, Pablo de Olavide University, Seville, Spain.

Department of Computer Science, University of Seville, Seville, Spain.

出版信息

Big Data. 2020 Aug;8(4):308-322. doi: 10.1089/big.2020.0051. Epub 2020 Jul 22.

Abstract

This study proposes a novel bioinspired metaheuristic simulating how the coronavirus spreads and infects healthy people. From a primary infected individual (patient zero), the coronavirus rapidly infects new victims, creating large populations of infected people who will either die or spread infection. Relevant terms such as reinfection probability, super-spreading rate, social distancing measures, or traveling rate are introduced into the model to simulate the coronavirus activity as accurately as possible. The infected population initially grows exponentially over time, but taking into consideration social isolation measures, the mortality rate, and number of recoveries, the infected population gradually decreases. The coronavirus optimization algorithm has two major advantages when compared with other similar strategies. First, the input parameters are already set according to the disease statistics, preventing researchers from initializing them with arbitrary values. Second, the approach has the ability to end after several iterations, without setting this value either. Furthermore, a parallel multivirus version is proposed, where several coronavirus strains evolve over time and explore wider search space areas in less iterations. Finally, the metaheuristic has been combined with deep learning models, to find optimal hyperparameters during the training phase. As application case, the problem of electricity load time series forecasting has been addressed, showing quite remarkable performance.

摘要

本研究提出了一种新颖的基于生物启发的元启发式方法,用于模拟冠状病毒的传播和感染健康人群的过程。从最初的受感染个体(零号病人)开始,冠状病毒会迅速感染新的受害者,从而产生大量受感染人群,这些人群要么死亡,要么传播感染。模型中引入了相关术语,如再感染概率、超级传播率、社交距离措施或旅行率,以尽可能准确地模拟冠状病毒的活动。受感染人群的数量最初会随时间呈指数级增长,但考虑到社会隔离措施、死亡率和康复人数,受感染人群的数量会逐渐减少。与其他类似策略相比,冠状病毒优化算法具有两个主要优势。首先,输入参数已经根据疾病统计数据进行了设置,从而防止研究人员任意初始化这些参数。其次,该方法可以在经过几次迭代后结束,而无需设置此值。此外,还提出了一种并行多病毒版本,其中几种冠状病毒株随着时间的推移而进化,并在较少的迭代中探索更广泛的搜索空间区域。最后,该元启发式方法与深度学习模型相结合,在训练阶段寻找最佳超参数。作为应用案例,解决了电力负荷时间序列预测问题,表现出相当出色的性能。

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