Munaganuri Ravi Kumar, Yamarthi Narasimha Rao, Bolem Sai Chandana
School of Computer Science and Engineering, VIT-AP University, Amaravati, Andhra Pradesh, India.
PeerJ Comput Sci. 2025 Jun 20;11:e2896. doi: 10.7717/peerj-cs.2896. eCollection 2025.
This research is anchored on the burning need for irrigation optimization and crop water use efficiency improvement, which remains a challenge in smart agriculture processes. Traditional irrigation methods normally lead to inefficiency, resulting in wasted water and non-maximum crops. These traditional ways normally lack attributes of real-time adaptability and secure data management-things that are very key to modernizing agricultural practices. In this work, artificial intelligence (AI), Internet of Things (IoT), and blockchain techniques will be integrated to design a comprehensive system for monitoring and predicting soil moisture levels. In the proposed model, long short-term memory (LSTM) networks are considered for soil moisture level prediction, taking into consideration past data, weather, and crop type. LSTM networks are chosen here for their high performance in timestamp series prediction tasks with an mean average error (MAE) of 0.02 m/m over a 7-day forecast horizon. For real-time monitoring, IoT sensors based on long range wide area network (LoRaWAN) technology are field-deployed for conducting long-range communications while consuming very limited energy to extend the sensor battery life over 5 years and bring down the data transmission latency below 5 s. It has an inbuilt permissioned blockchain framework-Hyperledger Fabric-which offers a secure and transparent system for data management and maintaining a record of soil moisture data, irrigation events, and metadata from sensors. This ensures the immutability and integrity of sets of data. Smart contracts automate irrigation upon reaching preconfigured soil moisture thresholds, and hence zero data integrity breaches occur with a transaction throughput of 1,000 transactions per second, taken into view with smart contract execution latency of less than 2 s. Moreover, it utilizes reinforcement learning with Deep Q-Learning to derive an optimized irrigation schedule. In this regard, it enables learning optimal irrigation policies and implements them to improve efficiency in the usage of water by 25% and increases crop yield by 15% compared to the traditional methods. Clearly from field trials, results indicate evident efficiency of the integrated system: a 20% water usage reduction and a 12% increase in crop yield within one growing season. This is rather an innovative take on irrigation practices, increasing a great deal of accuracy and sustainability for such and providing a really strong solution toward better agricultural productivity and resource management.
本研究基于灌溉优化和提高作物水分利用效率的迫切需求,这在智慧农业过程中仍是一项挑战。传统灌溉方法通常效率低下,导致水资源浪费和作物产量未达最大化。这些传统方式通常缺乏实时适应性和安全数据管理的特性,而这些特性对于农业实践现代化至关重要。在这项工作中,将集成人工智能(AI)、物联网(IoT)和区块链技术,设计一个用于监测和预测土壤湿度水平的综合系统。在所提出的模型中,考虑到过去的数据、天气和作物类型,采用长短期记忆(LSTM)网络来预测土壤湿度水平。这里选择LSTM网络是因为它们在时间戳序列预测任务中表现出色,在7天的预测期内平均绝对误差(MAE)为0.02 m/m。对于实时监测,基于长距离广域网(LoRaWAN)技术的物联网传感器被部署到现场进行远程通信,同时消耗非常有限的能量,将传感器电池寿命延长5年以上,并将数据传输延迟降低到5秒以下。它具有内置的许可区块链框架——超级账本织物(Hyperledger Fabric),该框架为数据管理以及记录土壤湿度数据、灌溉事件和传感器元数据提供了一个安全且透明的系统。这确保了数据集的不可变性和完整性。智能合约在达到预配置的土壤湿度阈值时自动进行灌溉,因此每秒有1000笔交易的吞吐量,且智能合约执行延迟小于2秒,从而不会出现数据完整性违规情况。此外,它利用深度Q学习的强化学习来得出优化的灌溉计划。在这方面,它能够学习最优灌溉策略并加以实施,与传统方法相比,将用水效率提高25%,作物产量提高15%。从田间试验可以明显看出,结果表明该集成系统效率显著:在一个生长季节内用水量减少20%,作物产量增加12%。这是对灌溉实践的一种创新做法,大大提高了此类做法的准确性和可持续性,并为提高农业生产力和资源管理提供了一个非常有力的解决方案。