Evaluation and spatial downscaling of CRU TS precipitation data in the Philippines

被引:12
|
作者
Salvacion A.R. [1 ,6 ]
Magcale-Macandog D.B. [2 ]
Cruz P.C.S. [3 ]
Saludes R.B. [4 ]
Pangga I.B. [5 ]
Cumagun C.J.R. [5 ]
机构
[1] Department of Community and Environmental Resource Planning, College of Human Ecology, University of the Philippines Los Baños, College, 4031, Laguna
[2] Institute of Biological Sciences, College of Arts and Sciences, University of the Philippines Los Baños, College, 4031, Laguna
[3] Institute of Crop Science, College of Agriculture and Food Science, University of the Philippines Los Baños, College, 4031, Laguna
[4] Agrometeorology and Farm Structures Division, College of Engineering and Agro-Industrial Technology, Institute of Agricultural Engineering, University of the Philippines Los Baños, College, 4031, Laguna
[5] Institute of Weed Science, Entomology and Plant Pathology, College of Agriculture and Food Science, University of the Philippines Los Baños, College, 4031, Laguna
[6] School of Environmental Science and Management, University of the Philippines Los Baños, College, 4031, Laguna
关键词
CRU TS; Delta downscaling; Philippines; Precipitation;
D O I
10.1007/s40808-018-0477-2
中图分类号
学科分类号
摘要
This study evaluated and downscaled (using Delta Method) Climate Research Unit time series (CRU TS) monthly precipitation gridded data in the Philippines. Based on the results, raw CRU TS data tends to underestimate (average percent bias = 0.89%) precipitation for most months of the year while downscaled CRU TS showed the opposite (average percent bias = − 2.99%). Overall both raw and downscaled CRU showed acceptable performance when compared with the observed monthly precipitation record. However, downscaled CRU TS data showed better accuracy (lower Mean Absolute Error and Root Mean Squared Error) and better performance (higher Nash–Sutcliffe Efficiency) compared with the raw CRU TS data. On the average, the computed evaluation statistics for downscaled CRU TS data were 79.87 (MAE), 144.56 (RMSE), and 0.43 (NSE) while 87.82 (MAE), 163.69 (RMSE), and 0.30 (NSE) for raw CRU TS. © 2018, Springer International Publishing AG, part of Springer Nature.
引用
收藏
页码:891 / 898
页数:7
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