An IoT based smart water quality assessment framework for aqua-ponds management using Dilated Spatial-temporal Convolution Neural Network (DSTCNN)

IF 3.6 2区 农林科学 Q2 AGRICULTURAL ENGINEERING
Peda Gopi Arepalli, K. Jairam Naik
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引用次数: 0

Abstract

Assuring the quality of water is crucial for the growth and survival of fish in aquaculture ponds. Traditional methods of water quality monitoring can be inefficient which makes real-time monitoring and decision is a challenging one. Some deep learning techniques have shown apparent in improving water quality monitoring and assessment process, but encounter some limitations like data-overfitting, interpretability, and finds difficulties in capturing complex spatial and temporal dynamics that have hindered their effectiveness. To overcome these challenges, we propose an enhanced Dilated Spatial-temporal Convolution Neural Network (DSTCNN) for water quality monitoring in aquaculture, which uses an IoT system setup for capturing real-time data inputs from aqua ponds. The water quality data captured through the IoT sensors is labeled as per the water quality index (WQI) standards for analysis. This labeled data is effectively classified into two categories by the proposed DSTCNN model based on their suitability for fish growth or potential to cause fish mortality. By the leveraging power of dilated convolutions, the DSTCNN architecture accurately handles the intricacies of both spatial and temporal data, enabling it to capture essential features and patterns across multiple snapshots. This capability empowers the model to truly comprehend the complex relationships inherent in spatiotemporal data. Furthermore, to address the concerns like overfitting due to complexity of data and enhance generalization, the proposed model employs a hybrid activation function that synergistically combines ReLU and sigmoid during the activation process. The proposed DSTCNN model has been implemented on real-time and public datasets and obtained 99.28% and 99.02% accuracy respectively, whereas the state-of-the-art PCR-GB model obtains 96.97% and 97.11% accuracy on real-time and public datasets respectively.

基于物联网的扩展时空卷积神经网络(DSTCNN)智能水质评估框架
确保水质对水产养殖池塘中鱼类的生长和生存至关重要。传统的水质监测方法效率低下,使得实时监测和决策成为一个挑战。一些深度学习技术在改善水质监测和评估过程中表现明显,但遇到了一些局限性,如数据过拟合、可解释性,以及难以捕捉复杂的时空动态,这些都阻碍了它们的有效性。为了克服这些挑战,我们提出了一种用于水产养殖水质监测的增强扩展时空卷积神经网络(DSTCNN),该网络使用物联网系统设置来捕获来自池塘的实时数据输入。通过物联网传感器捕获的水质数据被标记为水质指数(WQI)标准进行分析。DSTCNN模型根据标记数据对鱼类生长的适宜性或导致鱼类死亡的可能性,将这些标记数据有效地分为两类。通过利用扩展卷积的能力,DSTCNN架构准确地处理空间和时间数据的复杂性,使其能够捕获跨多个快照的基本特征和模式。这种能力使模型能够真正理解时空数据中固有的复杂关系。此外,为了解决由于数据复杂性导致的过拟合等问题并增强泛化能力,该模型采用了一种混合激活函数,在激活过程中协同结合ReLU和sigmoid。本文提出的DSTCNN模型在实时和公开数据集上的准确率分别为99.28%和99.02%,而目前最先进的PCR-GB模型在实时和公开数据集上的准确率分别为96.97%和97.11%。
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来源期刊
Aquacultural Engineering
Aquacultural Engineering 农林科学-农业工程
CiteScore
8.60
自引率
10.00%
发文量
63
审稿时长
>24 weeks
期刊介绍: Aquacultural Engineering is concerned with the design and development of effective aquacultural systems for marine and freshwater facilities. The journal aims to apply the knowledge gained from basic research which potentially can be translated into commercial operations. Problems of scale-up and application of research data involve many parameters, both physical and biological, making it difficult to anticipate the interaction between the unit processes and the cultured animals. Aquacultural Engineering aims to develop this bioengineering interface for aquaculture and welcomes contributions in the following areas: – Engineering and design of aquaculture facilities – Engineering-based research studies – Construction experience and techniques – In-service experience, commissioning, operation – Materials selection and their uses – Quantification of biological data and constraints
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