土壤湿度农业干旱指数的改进及其适用性

    Improvement and applicability of the soil moisture based agricultural drought index

    • 摘要: 准确监测农业干旱是保障粮食安全的基础。针对土壤湿度农业干旱指数(soil moisture agricultural drought index,SMADI)在干旱半干旱地区旱情监测不准确的问题,对SMADI进行了改进,同时修正了改进后的土壤湿度农业干旱指数(modified soil moisture agricultural drought index,SMADIM)的干旱等级划分标准,并从全区与局部尺度、时间和空间尺度、以及对干旱响应的时效性三方面对SMADIM的可靠性进行了验证。结果表明:SMADIM改进了SMADI在低植被覆盖区存在的旱情高估的问题,弥补了SMADI的不足,可用于任意植被覆盖区的旱情监测;SMADIM能够准确捕捉不同时间尺度(年、季、月)和空间尺度(全局、局部)的旱情信息,有效提高了农业干旱监测精度;与植被条件指数(vegetation condition index,VCI)和标准化降水蒸散指数(standardized precipitation evapotranspiration index,SPEI)相比,SMADIM对农业干旱的捕捉更加敏感,对干旱的响应度比VCI和SPEI提前了30~60 d。研究成果为准确监测全域农业干旱提供了一种可靠的方法和途径。

       

      Abstract: Agricultural droughts have frequently occurred in the arid and semi-arid areas in China. Frequent drought and delayed sowing have also posed a huge impact on crop yield and economic losses in the tens of billions of every year. There is a high demand to clarify the uneven annual distribution of precipitation. In this study, the translation invariance method was used to improve the applicability of the soil moisture agricultural drought index (SMADI), in order to accurately monitor the occurrence of agricultural drought for the sustainable development of the social economy. Then, the drought grading criteria of the modified soil moisture agricultural drought index(SMADIM) were defined by comprehensive analysis of the objective drought index. The reliability of SMADIM was finally verified from the regional, and temporal scales, as well as the timeliness of drought response. The results show that the SMADIM changed significantly the situation as the overestimation of drought in the low vegetation coverage areas, indicating a wider scope than the SMADI. The correlation between SMADIM and soil moisture data of 0~10cm depth was −0.77 (P<0.01). A better correlation of SMADIM was achieved with the damaged area, affected area and crop failure area. Specifically, the SMADIM correlation with the crop failure area was much better than SPEI (0.43) and VCI (0.07). Therefore, the SMADIM can be expected to accurately measure the major droughts in the typical regions. For instance, moderate and severe drought accounted for 49.53%, and 26.58%, respectively in Zhangye City in 2001. The mild and moderate drought were accounted for 26.47%, and 74.44%, respectively, in Xilinguole League in 2018. Meanwhile, the seasonal drought was ranked in descending order in the whole year: spring, autumn, winter and summer drought. The percentage of occurrence of no, mild, moderate, severe and extreme drought in the arid and semi-arid regions during spring were 7.82%, 19.91%, 32.78%, and 25.99%, respectively, while in summer were 20.69%, 26.73%, 20.78%, 18.84%, and 12.98%, respectively. Among them, the correlation coefficients between SMADIM and VCI that lagged by 0, 30 and 60 d in spring were 0.60, 0.69 and 0.70, respectively. Once the agricultural drought occurs in spring, the SMADIM can be expected to capture the agricultural drought up to 30 d ahead of VCI. The relationship between VCI and SMADIM that lagged by 30d was marginally significant in summer and winter. In autumn, the correlation coefficient between VCI and SMADIM with a lag of 60d was significantly higher than that with no-lag and a lag of 30 d. It infers that the SMADIM captured the drought information up to 60 d earlier than VCI in autumn drought. In winter, the lagged 60 d correlation coefficient relationship between SMADIM and SPEI was 0.65, which was higher than that no-lag and lagged 30 d , indicating the more sensitive SMADIM to agricultural droughts. Consequently, the SMADIM was more sensitive to the agricultural drought, where the response was 30-60 d earlier than that of VCI and SPEI. The finding can also provide a new approach to accurately monitor the agriculture drought.

       

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