Department of IoT, School of Computer Science and Engineering (SCOPE), Vellore Institute of Technology, Vellore, India.
Department of Electronics and Communication Engineering, S. A. Engineering College, Chennai, India.
Water Environ Res. 2024 Oct;96(10):e11138. doi: 10.1002/wer.11138.
The world's freshwater supply, predominantly sourced from rivers, faces significant contamination from various economic activities, confirming that the quality of river water is critical for public health, environmental sustainability, and effective pollution control. This research addresses the urgent need for accurate and reliable water quality monitoring by introducing a novel method for estimating the water quality index (WQI). The proposed approach combines cutting-edge optimization techniques with Deep Capsule Crystal Edge Graph neural networks, marking a significant advancement in the field. The innovation lies in the integration of a Hybrid Crested Porcupine Genghis Khan Shark Optimization Algorithm for precise feature selection, ensuring that the most relevant indicators of water quality (WQ) are utilized. Furthermore, the use of the Greylag Goose Optimization Algorithm to fine-tune the neural network's weight parameters enhances the model's predictive accuracy. This dual optimization framework significantly improves WQI prediction, achieving a remarkable mean squared error (MSE) of 6.7 and an accuracy of 99%. By providing a robust and highly accurate method for WQ assessment, this research offers a powerful tool for environmental authorities to proactively manage river WQ, prevent pollution, and evaluate the success of restoration efforts. PRACTITIONER POINTS: Novel method combines optimization and Deep Capsule Crystal Edge Graph for WQI estimation. Preprocessing includes data cleanup and feature selection using advanced algorithms. Deep Capsule Crystal Edge Graph neural network predicts WQI with high accuracy. Greylag Goose Optimization fine-tunes network parameters for precise forecasts. Proposed method achieves low MSE of 6.7 and high accuracy of 99%.
世界上的淡水主要来源于河流,但却面临着各种经济活动带来的严重污染,这表明河水的质量对公众健康、环境可持续性和有效的污染控制至关重要。本研究通过引入一种新的水质指数(WQI)估计方法,满足了对准确可靠的水质监测的迫切需求。该方法结合了最先进的优化技术和深度胶囊水晶边缘图神经网络,是该领域的一项重大进展。创新之处在于结合了混合豪猪成吉思汗鲨鱼优化算法进行精确的特征选择,确保了水质(WQ)最相关的指标被利用。此外,使用灰鹤优化算法来微调神经网络的权重参数,提高了模型的预测精度。这种双重优化框架大大提高了 WQI 的预测能力,取得了 6.7 的均方误差(MSE)和 99%的准确率。通过提供一种强大且高度准确的 WQ 评估方法,本研究为环境当局提供了一种工具,以主动管理河流水质、防止污染,并评估恢复工作的成效。实用要点:新颖的方法结合了优化和深度胶囊水晶边缘图来估计 WQI。预处理包括使用先进算法进行数据清理和特征选择。深度胶囊水晶边缘图神经网络以高精度预测 WQI。灰鹤优化算法微调网络参数以实现精确预测。所提出的方法具有较低的均方误差(MSE)为 6.7 和较高的准确率为 99%。