Jayaraman Prem Prakash, Yavari Ali, Georgakopoulos Dimitrios, Morshed Ahsan, Zaslavsky Arkady
Department of Computer Science and Software Engineering, Swinburne University of Technology, Melbourne 3022, Australia.
Data 61, CSIRO, Melbourne 3168, Australia.
Sensors (Basel). 2016 Nov 9;16(11):1884. doi: 10.3390/s16111884.
Improving farm productivity is essential for increasing farm profitability and meeting the rapidly growing demand for food that is fuelled by rapid population growth across the world. Farm productivity can be increased by understanding and forecasting crop performance in a variety of environmental conditions. Crop recommendation is currently based on data collected in field-based agricultural studies that capture crop performance under a variety of conditions (e.g., soil quality and environmental conditions). However, crop performance data collection is currently slow, as such crop studies are often undertaken in remote and distributed locations, and such data are typically collected manually. Furthermore, the quality of manually collected crop performance data is very low, because it does not take into account earlier conditions that have not been observed by the human operators but is essential to filter out collected data that will lead to invalid conclusions (e.g., solar radiation readings in the afternoon after even a short rain or overcast in the morning are invalid, and should not be used in assessing crop performance). Emerging Internet of Things (IoT) technologies, such as IoT devices (e.g., wireless sensor networks, network-connected weather stations, cameras, and smart phones) can be used to collate vast amount of environmental and crop performance data, ranging from time series data from sensors, to spatial data from cameras, to human observations collected and recorded via mobile smart phone applications. Such data can then be analysed to filter out invalid data and compute personalised crop recommendations for any specific farm. In this paper, we present the design of SmartFarmNet, an IoT-based platform that can automate the collection of environmental, soil, fertilisation, and irrigation data; automatically correlate such data and filter-out invalid data from the perspective of assessing crop performance; and compute crop forecasts and personalised crop recommendations for any particular farm. SmartFarmNet can integrate virtually any IoT device, including commercially available sensors, cameras, weather stations, etc., and store their data in the cloud for performance analysis and recommendations. An evaluation of the SmartFarmNet platform and our experiences and lessons learnt in developing this system concludes the paper. SmartFarmNet is the first and currently largest system in the world (in terms of the number of sensors attached, crops assessed, and users it supports) that provides crop performance analysis and recommendations.
提高农场生产力对于增加农场盈利能力以及满足因全球人口快速增长而迅速增长的粮食需求至关重要。通过了解和预测各种环境条件下的作物表现,可以提高农场生产力。目前,作物推荐是基于在田间农业研究中收集的数据,这些研究记录了各种条件(如土壤质量和环境条件)下的作物表现。然而,目前作物表现数据的收集速度很慢,因为此类作物研究通常在偏远和分散的地点进行,而且此类数据通常是手动收集的。此外,手动收集的作物表现数据质量很低,因为它没有考虑到人类操作员未观察到的早期条件,但这些条件对于筛选出会导致无效结论的收集数据至关重要(例如,即使短暂降雨后下午的太阳辐射读数或早晨阴天时的读数都是无效的,不应将其用于评估作物表现)。新兴的物联网(IoT)技术,如物联网设备(如无线传感器网络、联网气象站、摄像头和智能手机),可用于整理大量环境和作物表现数据,范围从传感器的时间序列数据到摄像头的空间数据,再到通过移动智能手机应用程序收集和记录的人类观察数据。然后可以对这些数据进行分析,以筛选出无效数据,并为任何特定农场计算个性化的作物推荐。在本文中,我们介绍了SmartFarmNet的设计,这是一个基于物联网 的平台,它可以自动收集环境、土壤、施肥和灌溉数据;从评估作物表现的角度自动关联此类数据并筛选出无效数据;并为任何特定农场计算作物预测和个性化作物推荐。SmartFarmNet几乎可以集成任何物联网设备,包括商用传感器、摄像头、气象站等,并将其数据存储在云端以进行性能分析和推荐。本文最后对SmartFarmNet平台进行了评估,并分享了我们在开发该系统过程中的经验和教训。SmartFarmNet是世界上第一个也是目前最大的系统(就连接的传感器数量、评估的作物数量和支持的用户数量而言),可提供作物表现分析和推荐。