ОГЛЯД ЗАСОБІВ МОНІТОРИНГУ ТА ПРОГНОЗУВАННЯ ВРОЖАЙНОСТІ

Заголовок (англійською): 
REVIEW OF MONITORING AND FORECASTING TOOLS OF THE CROP YIELD
Автор(и): 
Mingxin Huang
Ключові слова (укр): 
геоінформаційні технології; сільське господарство; моніторинг врожайності
Ключові слова (англ): 
geoinformation technologies; agriculture; monitoring crop yields
Анотація (укр): 
Створено теоретичну основу дослідження для вирішення задачі створення інформаційної технології моніторингу врожайності сільськогосподарських культур на основі аналізу мультиспектральних зображень, отриманих шляхом дистанційного зондування. Створена на основі цієї технології геоінформаційна система повинна моніторити та прогнозувати врожайність аналізуючи супутникові часові ряди зображень для виявлення кількісних та якісних показників врожайності, можливих захворювань рослин тощо. Описана в роботі задача є актуальною в умовах екологічної невизначеності. Виявлено, що через продовольчу кризу, наслідком якої є постійне зростання вартості продовольчих товарів, сільське господарство все більше функціонує в умовах невизначеності та ризику, що потребує застосування спеціальних методів дослідження.
Анотація (англ): 
A theoretical basis for research was created to solve the problem of creating an information technology for monitoring the yield of agricultural crops based on the analysis of multispectral images obtained by remote sensing. The geoinformation system created on the basis of this technology should monitor and yield the analysis of satellite time series of images to identify quantitative and qualitative indicators of yield, possible diseases of plants, and the like. The problem described in the work is relevant in conditions of environmental uncertainty. It is revealed that as a result of the food crisis, the consequence of which is a constant increase in the cost of food products, agriculture is increasingly functioning in conditions of uncertainty and risk, which requires the use of special research methods.
Публікатор: 
Київський національний університет будівництва і архітектури
Назва журналу, номер, рік випуску (укр): 
Управління розвитком складних систем, номер 38, 2019
Назва журналу, номер, рік випуску (рус): 
Управление развитием сложных систем, номер 38, 2019
Назва журналу, номер, рік випуску (англ): 
Management of Development of Complex Systems
Мова статті: 
English
Формат документа: 
application/pdf
Документ: 
Дата публікації: 
11 Март 2019
Номер збірника: 
Розділ: 
ТЕХНОЛОГІЯ УПРАВЛІННЯ РОЗВИТКОМ
Університет автора: 
Taras Shevchenko National University of Kyiv, Kyiv
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