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Principal Component Analysis to study spatial variability of errors in the INSAT derived quantitative precipitation estimates over Indian monsoon region

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Figure

Fig. 1. Mean QPE errors (mm) for the period 1 June to 30 August of summer monsoon 2001.
Fig. 2. Same as  Fig. 1 except for the root mean square errors (mm).
Table I. Principal components for the QPE error field of monsoon of 2001.
Fig. 3. Principal components for the error field displaying the percentage variance explained.
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