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Quality assurance plan for China collection 2.0 aerosol datasets

机译:中国收集2.0气溶胶数据集的质量保证计划

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The inversion of atmospheric aerosol optical depth (AOD) using satellite data has always been a challenge topic in atmospheric research. In order to solve the aerosol retrieval problem over bright land surface, the Synergetic Retrieval of Aerosol Properties (SRAP) algorithm has been developed based on the synergetic using of the MODIS data of TERRA and AQUA satellites [1, 2]. In this paper we describe, in details, the quality assessment or quality assurance (QA) plan for AOD products derived using the SRAP algorithm. The pixel-based QA plan is to give a QA flag to every step of the process in the AOD retrieval. The quality assessment procedures include three common aspects: 1) input data resource flags, 2) retrieval processing flags, 3) product quality flags [3]. Besides, all AOD products are assigned a QA ‘confidence’ flag (QAC) that represents the aggregation of all the individual QA flags. This QAC value ranges from 3 to 0, with QA = 3 indicating the retrievals of highest confidence and QA = 2/QA = 1 progressively lower confidence [4], and 0 means ‘bad’ quality. These QA (QAC) flags indicate how the particular retrieval process should be considered. It is also used as a filter for expected quantitative value of the retrieval, or to provide weighting for aggregating/averaging computations [5]. All of the QA flags are stored as a "bit flag" scientific dataset array in which QA flags of each step are stored in particular bit positions.
机译:利用卫星数据反演大气气溶胶光学深度(AOD)一直是大气研究中的一个挑战性话题。为了解决亮陆表面的气溶胶回收问题,基于协同使用TERRA和AQUA卫星的MODIS数据,开发了气溶胶特性的协同检索(SRAP)算法[1,2]。在本文中,我们详细描述了使用SRAP算法得出的AOD产品的质量评估或质量保证(QA)计划。基于像素的质量检查计划是为AOD检索过程的每个步骤都提供一个质量检查标志。质量评估程序包括三个常见方面:1)输入数据资源标志,2)检索处理标志,3)产品质量标志[3]。此外,所有AOD产品都分配有一个质量检查“信任”标志(QAC),该标志表示所有单个质量检查标志的集合。此QAC值的范围是3到0,其中QA = 3表示检索到最高置信度,而QA = 2 / QA = 1则逐渐降低置信度[4],而0表示“不良”质量。这些QA(QAC)标志指示应如何考虑特定的检索过程。它也可以用作预期的检索定量值的过滤器,或为汇总/平均计算提供权重[5]。所有QA标志都存储为“位标志”科学数据集数组,其中每个步骤的QA标志都存储在特定的位位置中。

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