Zivkovic Miodrag, Bacanin Nebojsa, Venkatachalam K, Nayyar Anand, Djordjevic Aleksandar, Strumberger Ivana, Al-Turjman Fadi
Singidunum University, Danijelova 32, 11000 Belgrade, Serbia.
School of Computer Science and Engineering, VIT Bhopal University, Bhopal, India.
Sustain Cities Soc. 2021 Mar;66:102669. doi: 10.1016/j.scs.2020.102669. Epub 2020 Dec 30.
The main objective of this paper is to further improve the current time-series prediction (forecasting) algorithms based on hybrids between machine learning and nature-inspired algorithms. After the recent COVID-19 outbreak, almost all countries were forced to impose strict measures and regulations in order to control the virus spread. Predicting the number of new cases is crucial when evaluating which measures should be implemented. The improved forecasting approach was then used to predict the number of the COVID-19 cases. The proposed prediction model represents a hybridized approach between machine learning, adaptive neuro-fuzzy inference system and enhanced beetle antennae search swarm intelligence metaheuristics. The enhanced beetle antennae search is utilized to determine the parameters of the adaptive neuro-fuzzy inference system and to improve the overall performance of the prediction model. First, an enhanced beetle antennae search algorithm has been implemented that overcomes deficiencies of its original version. The enhanced algorithm was tested and validated against a wider set of benchmark functions and proved that it substantially outperforms original implementation. Afterwards, the proposed hybrid method for COVID-19 cases prediction was then evaluated using the World Health Organization's official data on the COVID-19 outbreak in China. The proposed method has been compared against several existing state-of-the-art approaches that were tested on the same datasets. The proposed CESBAS-ANFIS achieved score of 0.9763, which is relatively high when compared to the value of 0.9645, achieved by FPASSA-ANFIS. To further evaluate the robustness of the proposed method, it has also been validated against two different datasets of weekly influenza confirmed cases in China and the USA. Simulation results and the comparative analysis show that the proposed hybrid method managed to outscore other sophisticated approaches that were tested on the same datasets and proved to be a useful tool for time-series prediction.
本文的主要目标是进一步改进当前基于机器学习与自然启发式算法相结合的时间序列预测(预报)算法。在近期新冠疫情爆发后,几乎所有国家都被迫实施严格措施和规定以控制病毒传播。在评估应实施何种措施时,预测新增病例数至关重要。然后,将改进后的预测方法用于预测新冠病例数。所提出的预测模型是一种机器学习、自适应神经模糊推理系统与增强型甲虫触角搜索群智能元启发式算法相结合的方法。利用增强型甲虫触角搜索来确定自适应神经模糊推理系统的参数,并提高预测模型的整体性能。首先,实现了一种增强型甲虫触角搜索算法,克服了其原始版本的不足。该增强算法针对更广泛的一组基准函数进行了测试和验证,结果表明它显著优于原始实现。之后,使用世界卫生组织关于中国新冠疫情爆发的官方数据,对所提出的新冠病例预测混合方法进行了评估。将所提出的方法与在相同数据集上测试的几种现有先进方法进行了比较。所提出的CESBAS - ANFIS方法的得分为0.9763,与FPASSA - ANFIS方法取得的0.9645相比,该得分相对较高。为了进一步评估所提出方法的稳健性,还针对中国和美国每周流感确诊病例的两个不同数据集对其进行了验证。仿真结果和对比分析表明,所提出的混合方法在相同数据集上测试时得分高于其他先进方法,证明是时间序列预测的一个有用工具。