Department of Electrical Engineering, Imam Khomeini Marine Science University, Nowshahr, Iran.
Department of Information Technology, College of Engineering and Computer Science, Lebanese French University, Erbil, Kurdistan Region, Iraq.
Comput Intell Neurosci. 2022 Aug 9;2022:5677961. doi: 10.1155/2022/5677961. eCollection 2022.
Artificial intelligence (AI) techniques have been considered effective technologies in diagnosing and breaking the transmission chain of COVID-19 disease. Recent research uses the deep convolution neural network (DCNN) as the discoverer or classifier of COVID-19 X-ray images. The most challenging part of neural networks is the subject of their training. Descent-based (GDB) algorithms have long been used to train fullymconnected layer (FCL) at DCNN. Despite the ability of GDBs to run and converge quickly in some applications, their disadvantage is the manual adjustment of many parameters. Therefore, it is not easy to parallelize them with graphics processing units (GPUs). Therefore, in this paper, the whale optimization algorithm (WOA) evolved by a fuzzy system called FuzzyWOA is proposed for DCNN training. With accurate and appropriate tuning of WOA's control parameters, the fuzzy system defines the boundary between the exploration and extraction phases in the search space. It causes the development and upgrade of WOA. To evaluate the performance and capability of the proposed DCNN-FuzzyWOA model, a publicly available database called COVID-Xray-5k is used. DCNN-PSO, DCNN-GA, and LeNet-5 benchmark models are used for fair comparisons. Comparative parameters include accuracy, processing time, standard deviation (STD), curves of ROC and precision-recall, and F1-Score. The results showed that the FuzzyWOA training algorithm with 20 epochs was able to achieve 100% accuracy, at a processing time of 880.44 s with an F1-Score equal to 100%. Structurally, the i-6c-2s-12c-2s model achieved better results than the i-8c-2s-16c-2s model. However, the results of using FuzzyWOA for both models have been very encouraging compared to particle swarm optimization, genetic algorithm, and LeNet-5 methods.
人工智能(AI)技术已被认为是诊断和阻断 COVID-19 疾病传播链的有效技术。最近的研究使用深度卷积神经网络(DCNN)作为 COVID-19 X 射线图像的发现者或分类器。神经网络最具挑战性的部分是它们的训练主题。基于下降的(GDB)算法长期以来一直用于训练 DCNN 的全连接层(FCL)。尽管 GDB 能够在某些应用中快速运行和收敛,但它们的缺点是需要手动调整许多参数。因此,它们不容易与图形处理单元(GPU)并行化。因此,在本文中,提出了一种由模糊系统称为 FuzzyWOA 进化的鲸鱼优化算法(WOA),用于 DCNN 训练。通过准确和适当调整 WOA 的控制参数,模糊系统定义了搜索空间中探索和提取阶段之间的边界。它导致了 WOA 的发展和升级。为了评估所提出的 DCNN-FuzzyWOA 模型的性能和能力,使用了一个名为 COVID-Xray-5k 的公共数据库。使用 DCNN-PSO、DCNN-GA 和 LeNet-5 基准模型进行公平比较。比较参数包括准确率、处理时间、标准差(STD)、ROC 和精度-召回率曲线以及 F1 分数。结果表明,使用 20 个 epoch 的 FuzzyWOA 训练算法能够达到 100%的准确率,处理时间为 880.44s,F1 分数等于 100%。结构上,i-6c-2s-12c-2s 模型的结果优于 i-8c-2s-16c-2s 模型。然而,与粒子群优化、遗传算法和 LeNet-5 方法相比,使用 FuzzyWOA 对这两种模型的结果都非常令人鼓舞。