2018
DOI: 10.1088/1755-1315/195/1/012001
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Analysis of plant pattern using water balance and cimogram based on oldeman climate type

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Cited by 26 publications
(11 citation statements)
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“…An average of rainfall data in the Laut Tawar Lake Catchment Area was calculated using the Thiessen Polygon Method [33,34,35]. The relationship of rainfall on the TSS in the Laut Tawar Lake was analyzed by classifying the amount of rainfall based on Dry Months, Moist Months, and Wet Months according to the Oldeman Method classification [36,37,38].…”
Section: Figure 1 the Map Of Research Locationmentioning
confidence: 99%
“…An average of rainfall data in the Laut Tawar Lake Catchment Area was calculated using the Thiessen Polygon Method [33,34,35]. The relationship of rainfall on the TSS in the Laut Tawar Lake was analyzed by classifying the amount of rainfall based on Dry Months, Moist Months, and Wet Months according to the Oldeman Method classification [36,37,38].…”
Section: Figure 1 the Map Of Research Locationmentioning
confidence: 99%
“…Currently, the main imperatives for the sustainable development of agriculture include: a) increasing human and social capital of rural territories; b) stimulating innovation and technological modernization of the industry; c) conserving natural resources and preserving them for future generations (Caraka, Lee, Kurniawan, Herliansyah, Kaban, Nasution, Gio, Chen, Toharudin, and Pardamean, 2020;Caraka, Tahmid, Putra, Iskandar, Mauludin, Hermansah, Goldameir, Sustainable agricultural development requires innovations that increase the efficiency and competitiveness of the industry in the domestic and global markets (Sinha, 2019;Kheyfets and Chernova, 2019;Voronin, Chupina, Voronina, and Chupin, 2019;Kantemirova, Kuchieva, and Balikoev, 2016;Kharitonov, 2016aKharitonov, , 2016bAdenle, Wedig, and Azadi, 2019;de Gennaro and Forleo, 2019;Nikolaeva, 2014;Markova, 2013;Brinza, Ilyichev, Ugarova, and Loginova, 2015;Fedorenko, Persteneva, Konovalova, and Tokarev, 2016). Major innovations in agriculture will lead to: an increase in crop yields and livestock productivity; the growth in labor productivity and agricultural production; saving material, labor, and financial resources (Surya, Syafri, Abubakar, Sahban, and Sakti, 2020;Ponkratov, Karaev, Silvestrov, Kuznetsov, Smirnov, and Kotova, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…A review by Lovarelli et al reported that parameters such as climatic conditions of plantation area, type of plantation land, and tree plant productivity significantly impact the values of the water footprint in agricultural areas for crops [8]. For example, data-driven analyses of weather patterns can be used to forecast local rainfall, which can be useful to predict green water availability in a given region [11][12][13][14][15]. Meanwhile, Suttayakul et al used crop water scenarios to analyze green, blue, and grey water footprint in several provinces in Thailand by varying the characteristics of soil [16].…”
Section: Introductionmentioning
confidence: 99%