首页> 外文期刊>Journal of hydrologic engineering >Improved Generalized Calibration of an Impedance Probe for Soil Moisture Measurement at Regional Scale Using Bayesian Neural Network and Soil Physical Properties
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Improved Generalized Calibration of an Impedance Probe for Soil Moisture Measurement at Regional Scale Using Bayesian Neural Network and Soil Physical Properties

机译:利用贝叶斯神经网络和土壤物理性质改善区域规模土壤水分测量阻抗探头的广义校准

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Regional-scale precise soil moisture measurements are required for remote sensing-based soil moisture product validation besides, complimenting in several hydrological and agricultural applications. Though the gravimetric method provides the most accurate soil moisture measurements, it cannot be extended to the regional-scale due to the large number of sampling requirements. An impedance probe is a suitable substitute for the time-intensive gravimetric method; however, it needs soil/field-specific calibrations for precise measurements. The present study aims to develop a generalized calibration of an impedance probe (i.e., ThetaProbe) for precise measurements of soil moisture at the regional-scale within the root-mean-square-error (RMSE) of 0.04 m~3 m~3 to fulfil the accuracy requirement of current satellite missions. A few methods for calibrating impedance probe were investigated using 496 gravimetric samples and coincident impedance probe measurements collected over 83 locations through field campaigns in a paddy dominated tropical Indian watershed that covers an area of 500 km~2. The manufacturer generalized calibration was found to have high RMSE (0.0523 m~3 m~3) and considerable bias (0.0241 m3 irr3) in soil moisture measurements. Developed generalized and soil-specific calibration based on a linear regression technique that resulted in RMSE values of 0.0468 and 0.0422 m~3 m~3, respectively. Further, a Bayesian neural network (BNN) based method, a nonlinear technique, was used for developing a generalized calibration of the impedance probe. The results illustrated that BNN-based generalized calibration (RMSE < 0.04 m3 m"3) performs better than the linear regression-based calibrations (RMSE > 0.04 m3 nT3). Moreover, the performance of BNN-based generalized calibration was further improved by the inclusion of soil physical properties as input and yielded an RMSE value up to 0.0352 and 0.0366 m3 irr3 during training and cross-validation process, respectively.
机译:除了若干水文和农业应用中,偏远的土壤水分产品验证需要区域规模精确的土壤水分测量。虽然重量法提供了最精确的土壤湿度测量,但由于大量的采样要求,它不能扩展到区域规模。阻抗探针是适当的替代时间 - 预重量法;然而,它需要针对精确测量的土壤/现场特异性校准。本研究旨在开发阻抗探针(即,θ,θ)的广义校准,以精确测量区域范围内的土壤湿度(RMSE)0.04 m〜3 m〜3的区域规模。满足当前卫星任务的准确性要求。研究了使用496重量标样品研究了校准阻抗探针的方法,并通过稻田主导的热带印度水域中的野外活动收集了83个地点的重合阻抗探针测量,占地面积500 km〜2。发现制造商广泛性校准在土壤湿度测量中具有高RMSE(0.0523M〜3 m〜3)和相当大的偏差(0.0241m3 ant3)。基于线性回归技术开发了广义和土壤特异性校准,导致RMSE值分别为0.0468和0.0422 m〜3 m〜3。此外,基于贝叶斯神经网络(BNN)的方法是非线性技术,用于开发阻抗探针的广义校准。结果表明,基于BNN的广义校准(RMSE <0.04 M3 M“3)比线性回归的校准更好(RMSE> 0.04m3 NT3)。此外,通过该基于BNN的广义校准的性能进一步得到改善将土壤物理性质作为输入掺入,并在训练和交叉验证过程中产生高达0.0352和0.0366 M3 Irr3的RMSE值。

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