A Simple Trilingual APP for Determining Near-Surface Soil Moisture

The locust has been devastating pest, which destructs the crops and pastures. Scientists discover the breeding habitats of locust based on soil surface water content (SWC) to devise preventive measures. Hence, accurate interpretation of SWC is vital to safeguard economic livelihood and ensure food security. Researchers usually adapt satellite data and manual/automatic colour-based image processing techniques to interpret SWC. However, satellites could not capture high-resolution images and ground information in densely vegetated areas. In addition, many of the ground surveying teams/farmers could not conduct colour analysis due to the lack of knowledge. Therefore, this manuscript introduces a newly developed web app to overcome the limitations of previously developed techniques. The steps involved in developing the new app were demonstrated to avoid the manual image analysis. Four series of experiments were conducted to quantify the moisture content using the newly developed app. The moisture content was also quantified using conventional manual image analysis technique to validate the newly developed app. The difference between the moisture contents obtained from the above-mentioned methods was found to be 1%–3%. This shows that the newly developed app has potential to identify the locust breeding habitats and guide the ground surveying teams to prevent locust swarm formation.

[1]  D. Hunter Advances in the control of locusts (Orthoptera: Acrididae) in eastern Australia: from crop protection to preventive control , 2004 .

[2]  R. G. Healey,et al.  A GIS for Desert Locust Forecasting and Monitoring , 1996, Int. J. Geogr. Inf. Sci..

[3]  H. Vereecken,et al.  Phosphorus Binding to Nanoparticles and Colloids in Forest Stream Waters , 2017 .

[4]  Mohamed El Hacen Jaavar,et al.  Daily microhabitat shifting of solitarious-phase Desert locust adults: implications for meaningful population monitoring , 2016, SpringerPlus.

[5]  S. Simpson,et al.  A comparison of nutritional regulation in solitarious- and gregarious-phase nymphs of the desert locust Schistocerca gregaria. , 2002, The Journal of experimental biology.

[6]  F. Bullen,et al.  Locusts and Grasshoppers as Pests of Crops and Pasture-A Preliminary Economic Approach , 1966 .

[7]  G. Petropoulos,et al.  A review of Ts/VI remote sensing based methods for the retrieval of land surface energy fluxes and soil surface moisture , 2009 .

[8]  Vinay Kumar Gadi,et al.  A Novel Python Program to Automate Soil Colour Analysis and Interpret Surface Moisture Content , 2020 .

[9]  Olivier Merlin,et al.  Smos based High Resolution Soil Moisture Estimates for Desert Locust Preventive Management , 2018, IGARSS 2018 - 2018 IEEE International Geoscience and Remote Sensing Symposium.

[10]  Keith Cressman,et al.  Role of remote sensing in desert locust early warning , 2013 .

[11]  K. Mumford,et al.  Quantification of Fluid Saturations in Transparent Porous Media , 2017 .

[12]  W. A. Take,et al.  Characterization of Transparent Soil for Unsaturated Applications , 2011 .

[13]  Wesley J. Chun,et al.  Python Web Development with Django , 2008 .

[14]  J. U. Hielkema,et al.  Operational use of environmental satellite remote sensing and satellite communications technology for global food security and locust control by FAO: The ARTEMIS and DIANA systems , 1994 .

[15]  A. Kaleita,et al.  Relationship Between Soil Moisture Content and Soil Surface Reflectance , 2005 .

[16]  Adrian Holovaty,et al.  The Definitive Guide to Django: Web Development Done Right, Second Edition , 2009 .

[17]  Robert A. Cheke,et al.  Soil moisture assessments for brown locust Locustana pardalina breeding potential using synthetic aperture radar , 2014 .

[18]  Michel Lecoq,et al.  Locust and Grasshopper Management. , 2019, Annual review of entomology.

[19]  Sreedeep Sekharan,et al.  Understanding Soil Surface Water Content Using Light Reflection Theory: A Novel Color Analysis Technique Considering Variability in Light Intensity , 2018, Journal of Testing and Evaluation.

[20]  W. Crow,et al.  Comparison of microwave remote sensing and land surface modeling for surface soil moisture climatology estimation , 2020 .