Assessment of Soil Heat Flux Equations for Different Crops under Semi Humid Conditions

IF 1.6 4区 农林科学 Q2 AGRONOMY Italian Journal of Agrometeorology-Rivista Italiana Di Agrometeorologia Pub Date : 2019-10-06 DOI:10.13128/IJAM-652
Sezel Karayusufoğlu Uysal, L. Şaylan
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引用次数: 1

Abstract

Soil heat flux (G) is an important component of energy balance by constraining the available amount of latent heat and sensible heat. There are many methods and formulations in the literature to estimate G accurately. In this study, widely used G estimation models are chosen to test. The models are based on Spectral Vegetation Indices (SVIs) namely, Normalized Difference Vegetation Index (NDVI), and Soil Adjusted Vegetation Index (SAVI) together with leaf area index (LAI), and crop height. Two successive growing periods of winter wheat (Triticum Aestivum L.), sunflower (Helianthus annuus L.), and maize (Zea mays L.) fields, located in the northwest part of Turkey, are used. Midday values (average of 09:30- 13:30) of G and net radiation (Rn) used in order to capture the time period, when G is proven to be much dominant. According to the results, overall the best relation obtained with an exponential NDVI model with a determination coefficient value of 0.83 and a root mean square (RMS) error value of 20.28 Wm-2 for maize. For winter wheat, G predicted the best with SAVI based model (r2=0.74), and for sunflower, LAI based model worked best with 0.75 r2 value. Crop height (CH) based nonlinear regression G model that suggested in this study worked better than linear models suggested in the literature with a better determination coefficient (r2=0.70) and a lower RMS error value (10.8 Wm-2).
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半湿润条件下不同作物土壤热通量方程的评价
土壤热通量(G)是能量平衡的重要组成部分,它制约着潜热和感热的可利用量。文献中有许多准确估计G的方法和公式。本研究选择广泛使用的G估计模型进行检验。该模型基于光谱植被指数(SVIs),即归一化植被指数(NDVI)和土壤调整植被指数(SAVI)以及叶面积指数(LAI)和作物高度。使用位于土耳其西北部的冬小麦(Triticum Aestivum L.)、向日葵(Helianthus annuus L.)和玉米(Zea mays L.)连续两个生长期的田地。利用正午的G值(平均09:30- 13:30)和净辐射(Rn)来捕捉这段时间,在这段时间里G被证明是占优势的。结果表明,总体而言,玉米NDVI指数模型关系最佳,其决定系数为0.83,均方根误差为20.28 Wm-2。对于冬小麦,基于SAVI的模型预测G值最佳(r2=0.74);对于向日葵,基于LAI的模型预测G值最佳(r2值为0.75)。本研究提出的基于作物高度(CH)的非线性回归G模型具有较好的决定系数(r2=0.70)和较低的均方根误差值(10.8 Wm-2),优于文献提出的线性模型。
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来源期刊
CiteScore
2.10
自引率
8.30%
发文量
6
期刊介绍: Among the areas of specific interest of the journal there are: ecophysiology; phenology; plant growth, quality and quantity of production; plant pathology; entomology; welfare conditions of livestocks; soil physics and hydrology; micrometeorology; modeling, simulation and forecasting; remote sensing; territorial planning; geographical information systems and spatialization techniques; instrumentation to measure physical and biological quantities; data validation techniques, agroclimatology; agriculture scientific dissemination; support services for farmers.
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