Jithendra Thandra, Sharief Basha Shaik
Department of Mathematics, School of Advanced Sciences, Vellore Institute of Technology, Vellore 632014, India.
Diagnostics (Basel). 2023 May 6;13(9):1641. doi: 10.3390/diagnostics13091641.
This research is aimed to escalate Adaptive Neuro-Fuzzy Inference System (ANFIS) functioning in order to ensure the veracity of existing time-series modeling. The COVID-19 pandemic has been a global threat for the past three years. Therefore, advanced forecasting of confirmed infection cases is extremely essential to alleviate the crisis brought out by COVID-19. An adaptive neuro-fuzzy inference system-reptile search algorithm (ANFIS-RSA) is developed to effectively anticipate COVID-19 cases. The proposed model integrates a machine-learning model (ANFIS) with a nature-inspired Reptile Search Algorithm (RSA). The RSA technique is used to modulate the parameters in order to improve the ANFIS modeling. Since the performance of the ANFIS model is dependent on optimizing parameters, the statistics of infected cases in China and India were employed through data obtained from WHO reports. To ensure the accuracy of our estimations, corresponding error indicators such as RMSE, RMSRE, MAE, and MAPE were evaluated using the coefficient of determination (R2). The recommended approach employed on the China dataset was compared with other upgraded ANFIS methods to identify the best error metrics, resulting in an R2 value of 0.9775. ANFIS-CEBAS and Flower Pollination Algorithm and Salp Swarm Algorithm (FPASSA-ANFIS) attained values of 0.9645 and 0.9763, respectively. Furthermore, the ANFIS-RSA technique was used on the India dataset to examine its efficiency and acquired the best R2 value (0.98). Consequently, the suggested technique was found to be more beneficial for high-precision forecasting of COVID-19 on time-series data.
本研究旨在提升自适应神经模糊推理系统(ANFIS)的功能,以确保现有时间序列建模的准确性。在过去三年里,新冠疫情一直是全球性威胁。因此,对确诊感染病例进行精准预测对于缓解新冠疫情引发的危机极为重要。为此,开发了一种自适应神经模糊推理系统-爬虫搜索算法(ANFIS-RSA),以有效预测新冠病例。该模型将机器学习模型(ANFIS)与受自然启发的爬虫搜索算法(RSA)相结合。利用RSA技术来调整参数,以改进ANFIS建模。由于ANFIS模型的性能取决于参数优化,因此通过从世界卫生组织报告中获取的数据,采用了中国和印度的感染病例统计数据。为确保估计的准确性,使用决定系数(R2)评估了相应的误差指标,如均方根误差(RMSE)、均方根相对误差(RMSRE)、平均绝对误差(MAE)和平均绝对百分比误差(MAPE)。将在中国数据集上采用的推荐方法与其他改进的ANFIS方法进行比较,以确定最佳误差指标,得出R2值为0.9775。ANFIS-CEBAS以及花授粉算法和鹈鹕群算法(FPASSA-ANFIS)分别获得了0.9645和0.9763的值。此外,在印度数据集上使用了ANFIS-RSA技术来检验其效率,并获得了最佳R2值(0.98)。因此,该推荐技术被发现对于基于时间序列数据的新冠疫情高精度预测更有益。