Multiparametric Monitoring in Equatorian Tomato Greenhouses (III): Environmental Measurement Dynamics

World population growth currently brings unequal access to food, whereas crop yields are not increasing at a similar rate, so that future food demand could be unmet. Many recent research works address the use of optimization techniques and technological resources on precision agriculture, especially in large demand crops, including climatic variables monitoring using wireless sensor networks (WSNs). However, few studies have focused on analyzing the dynamics of the environmental measurement properties in greenhouses. In the two companion papers, we describe the design and implementation of three WSNs with different technologies and topologies further scrutinizing their comparative performance, and a detailed analysis of their energy consumption dynamics is also presented, both considering tomato greenhouses in the Andean region of Ecuador. The three WSNs use ZigBee with star topology, ZigBee with mesh topology (referred to here as DigiMesh), and WiFi with access point topology. The present study provides a systematic and detailed analysis of the environmental measurement dynamics from multiparametric monitoring in Ecuadorian tomato greenhouses. A set of monitored variables (including CO2, air temperature, and wind direction, among others) are first analyzed in terms of their intrinsic variability and their short-term (circadian) rhythmometric behavior. Then, their cross-information is scrutinized in terms of scatter representations and mutual information analysis. Based on Bland–Altman diagrams, good quality rhythmometric models were obtained at high-rate sampling signals during four days when using moderate regularization and preprocessing filtering with 100-coefficient order. Accordingly, and especially for the adjustment of fast transition variables, it is appropriate to use high sampling rates and then to filter the signal to discriminate against false peaks and noise. In addition, for variables with similar behavior, a longer period of data acquisition is required for the adequate processing, which makes more precise the long-term modeling of the environmental signals.

[1]  T. Ahonen,et al.  Greenhouse Monitoring with Wireless Sensor Network , 2008, 2008 IEEE/ASME International Conference on Mechtronic and Embedded Systems and Applications.

[2]  Yu Mei,et al.  A Robotic Platform for Corn Seedling Morphological Traits Characterization , 2017, Sensors.

[3]  Cvetan Gavrovski,et al.  Energy consumption estimation of wireless sensor networks in greenhouse crop production , 2017, IEEE EUROCON 2017 -17th International Conference on Smart Technologies.

[4]  Kah Phooi Seng,et al.  Big data and machine learning for crop protection , 2018, Comput. Electron. Agric..

[5]  James W. Jones,et al.  Working with Dynamic Crop Models: Methods, Tools and Examples for Agriculture and Environment , 2014 .

[6]  José Luis Rojo-Álvarez,et al.  Multiparametric Monitoring in Equatorian Tomato Greenhouses (II): Energy Consumption Dynamics , 2018, Sensors.

[7]  Bharghava Rajaram,et al.  IOT BASED CROP DISEASE IDENTIFICATION SYSTEM USING OPTIMIZATION TECHNIQUES , 2018 .

[8]  Sherine M. Abd El-kader,et al.  Precision farming solution in Egypt using the wireless sensor network technology , 2013 .

[9]  Neelam Srivastava,et al.  WIRELESS SENSOR NETWORKS IN AGRICULTURE: FOR POTATO FARMING , 2010 .

[10]  Ginés García-Mateos,et al.  A fast and accurate expert system for weed identification in potato crops using metaheuristic algorithms , 2018, Comput. Ind..

[11]  Nima Jafari Navimipour,et al.  Big data handling mechanisms in the healthcare applications: A comprehensive and systematic literature review , 2018, J. Biomed. Informatics.

[12]  José Pérez-Alonso,et al.  On air temperature distribution and ISO 7726-defined heterogeneity inside a typical greenhouse in Almería , 2018, Comput. Electron. Agric..

[13]  Mario L. V. Martina,et al.  A Novel Strategy for Very-Large-Scale Cash-Crop Mapping in the Context of Weather-Related Risk Assessment, Combining Global Satellite Multispectral Datasets, Environmental Constraints, and In Situ Acquisition of Geospatial Data , 2018, Sensors.

[14]  Ren Shougang,et al.  Environment monitoring system for flowers in greenhouse using low-power transmission , 2013 .

[15]  Ü. Halik,et al.  Effects of green space spatial pattern on land surface temperature: Implications for sustainable urban planning and climate change adaptation , 2014 .

[16]  Manijeh Keshtgary,et al.  An Efficient Wireless Sensor Network for Precision Agriculture , 2012 .

[17]  Mark S. Leeson,et al.  Decision support system for greenhouse tomato yield prediction using artificial intelligence techniques , 2010 .

[18]  P. Vijayabaskar,et al.  Crop prediction using predictive analytics , 2017, 2017 International Conference on Computation of Power, Energy Information and Commuincation (ICCPEIC).

[19]  A. Turhan,et al.  The response of processing tomato to deficit irrigation at various phenological stages in a sub-humid environment , 2014 .

[20]  Rebeca Goya-Esteban,et al.  Heart Rate Variability on 7-Day Holter Monitoring Using a Bootstrap Rhythmometric Procedure , 2010, IEEE Transactions on Biomedical Engineering.

[21]  Jian Wang,et al.  Ventilation optimization of solar greenhouse with removable back walls based on CFD , 2017, Comput. Electron. Agric..

[22]  J. Porter,et al.  Data requirements for crop modelling - applying the learning curve approach to the simulation of winter wheat flowering time under climate change. , 2018 .

[23]  Huajian Liu,et al.  A multispectral machine vision system for invertebrate detection on green leaves , 2018, Comput. Electron. Agric..

[24]  Emiro de la Hoz Franco,et al.  Monitoring system for agronomic variables based in WSN technology on cassava crops , 2018, Comput. Electron. Agric..

[25]  Jeff Shaw,et al.  $9 Billion for What? , 2000 .

[26]  Sachin S. Kamble,et al.  Sustainable Industry 4.0 framework: A systematic literature review identifying the current trends and future perspectives , 2018, Process Safety and Environmental Protection.

[27]  Ke Yan,et al.  A Monitoring System for Vegetable Greenhouses based on a Wireless Sensor Network , 2010, Sensors.

[28]  José Luis Rojo-Álvarez,et al.  Long-term characterization of persistent atrial fibrillation: wave morphology, frequency, and irregularity analysis , 2014, Medical & Biological Engineering & Computing.

[29]  Simon Cook,et al.  Using Bayesian networks to predict future yield functions with data from commercial oil palm plantations: A proof of concept analysis , 2018, Comput. Electron. Agric..

[30]  J. Ríos-Moreno,et al.  Greenhouse energy consumption prediction using neural networks models , 2009 .

[31]  Victor R. Preedy,et al.  Tomatoes and tomato products: nutritional, medicinal and therapeutic properties. , 2008 .

[32]  Francisco Javier Ferrández Pastor,et al.  Developing Ubiquitous Sensor Network Platform Using Internet of Things: Application in Precision Agriculture , 2016, Sensors.

[33]  Lav R. Khot,et al.  Economical thermal-RGB imaging system for monitoring agricultural crops , 2018, Comput. Electron. Agric..

[34]  Ioana Visan,et al.  Circadian rhythms , 2012, Nature Immunology.

[35]  Hyun Yoe,et al.  Agricultural Production System Based on IoT , 2013, 2013 IEEE 16th International Conference on Computational Science and Engineering.

[36]  Yibo Chen,et al.  A Scalable Context-Aware Objective Function (SCAOF) of Routing Protocol for Agricultural Low-Power and Lossy Networks (RPAL) , 2015, Sensors.

[37]  Raj Mohan Singh,et al.  Agricultural Land Allocation for Crop Planning in a Canal Command Area Using Fuzzy Multiobjective Goal Programming , 2017 .

[38]  Kevin B. Korb,et al.  Parameterisation and evaluation of a Bayesian network for use in an ecological risk assessment , 2007, Environ. Model. Softw..

[39]  Thomas M. Cover,et al.  Elements of Information Theory , 2005 .

[40]  V. O. Bohaienko,et al.  Optimization of Operation Regimes of Irrigation Canals Using Genetic Algorithms , 2018 .

[41]  Francisco Rodríguez,et al.  Simulation of Greenhouse Climate Monitoring and Control with Wireless Sensor Network and Event-Based Control , 2009, Sensors.

[42]  Yong-song Zhang,et al.  Carbon dioxide enrichment by composting in greenhouses and its effect on vegetable production , 2009 .

[43]  Ravi Kishore Kodali,et al.  WSN in coffee cultivation , 2016, 2016 International Conference on Computing, Communication and Automation (ICCCA).

[44]  Peter J. Gregory,et al.  Feeding nine billion: the challenge to sustainable crop production. , 2011, Journal of experimental botany.

[45]  D. Megias,et al.  Model predictive control of greenhouse climatic processes using on-line linearisation , 2001, 2001 European Control Conference (ECC).

[46]  José Luis Rojo-Álvarez,et al.  Multiparametric Monitoring in Equatorian Tomato Greenhouses (I): Wireless Sensor Network Benchmarking , 2018, Sensors.

[47]  David Rivas,et al.  WSN Prototype for African Oil Palm Bud Rot Monitoring , 2017 .

[48]  M. Kenward,et al.  An Introduction to the Bootstrap , 2007 .

[49]  Raúl Aquino-Santos,et al.  Developing a New Wireless Sensor Network Platform and Its Application in Precision Agriculture , 2011, Sensors.

[50]  Evor L. Hines,et al.  Yield Prediction Technique using Hybrid Adaptive Neural Genetic Network , 2012, Int. J. Comput. Intell. Appl..

[51]  Petre Stoica,et al.  Spectral Analysis of Signals , 2009 .

[52]  Majdi Mansouri,et al.  Prediction of non-linear time-variant dynamic crop model using Bayesian methods , 2013 .

[53]  K. A. Stroud,et al.  Engineering Mathematics , 2020, Nature.

[54]  K. L. Ponce-Guevara,et al.  GreenFarm-DM: A tool for analyzing vegetable crops data from a greenhouse using data mining techniques (First trial) , 2017, 2017 IEEE Second Ecuador Technical Chapters Meeting (ETCM).

[55]  G. Sposito Green Water and Global Food Security , 2013 .

[56]  Noman Islam,et al.  A review of wireless sensors and networks' applications in agriculture , 2014, Comput. Stand. Interfaces.

[57]  Ke-Sheng Cheng,et al.  Assessing Uncertainty in LULC Classification Accuracy by Using Bootstrap Resampling , 2016, Remote. Sens..

[58]  Keith H. Coble,et al.  Big Data in Agriculture: A Challenge for the Future , 2018 .

[59]  Pankaj K. Choudhary,et al.  Measuring Agreement: Models, Methods, and Applications , 2017 .

[60]  Germaine Cornelissen,et al.  Cosinor-based rhythmometry , 2014, Theoretical Biology and Medical Modelling.

[61]  D. Tilman,et al.  Global food demand and the sustainable intensification of agriculture , 2011, Proceedings of the National Academy of Sciences.

[62]  Jordi Llop,et al.  Testing the Suitability of a Terrestrial 2D LiDAR Scanner for Canopy Characterization of Greenhouse Tomato Crops , 2016, Sensors.

[63]  Yifan Li,et al.  Use of Mutual Information and Transfer Entropy to Assess Interaction between Parasympathetic and Sympathetic Activities of Nervous System from HRV , 2017, Entropy.