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2、?-6?-?Neumann type:flux based boundary conditionDirichlet type:head based boundary conditionZero-depth gradient:Critical depth:vanGenuchten relationships:?SurfaceSubsurface10/29/18Rays Computational Intelligence Lab(RCIL)?7?(PDE)10/29/18Rays Computational Intelligence Lab(RCIL)ssQUt+G+=)()(yyy?(ODE)
3、+G+=iiiiVssVVVdVQdVdVUdVt)()(yyy?+G+=ijiijiVssAAVdVQdAndAUndVt)()(yyy!issjijjijiVQADnACndtdA+=!y?8?N?-?(PIHM)10/29/18Rays Computational Intelligence Lab(RCIL)?oK?o-?o?:?910/29/18Rays Computational Intelligence Lab(RCIL)241?(m2)?(%)?8,351,008.7329.45%?-?1,684,029.935.94%?-?6,857,605.0024.18%?3,911,84
4、1.8713.79%?-?161,824.390.57%?-?156,573.290.55%?-?1,023,023.573.61%?-?502,399.291.77%?-?45,859.250.16%?5,576,310.8919.66%?86,715.720.31%1.89 km26.66%?-?10?-?10/29/18Rays Computational Intelligence Lab(RCIL)1110/29/18Rays Computational Intelligence Lab(RCIL)1?1?3?1?2023.042?1?2169.27?1?2079.8920162017
5、2018?0?mm?0?mm?0?mm?647.248.0398.627.4518.61.4612.7117.3582.76.7597.50.40.0366.0437.4163.7550.91.3?-?12?10/29/18Rays Computational Intelligence Lab(RCIL)2007200820092001320142015?(?0.6971.040.6850.6310.6140.520.4650.4820.593?)?(?0.3850.2170.3390.4960.3650.7050.6160.6230.511?(?0.0390.0890.
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7、utational Intelligence Lab(RCIL)20102011(2010-2011)/2011?(?0.6310.6142.8%?)?(?0.4960.36535.9%?(?0.0350.037-5.4%?(?0.6240.716-12.8%?(?0.10.0911.1%/?(?0.3360.397-15.4%?(?0.1880.228-17.5%?0.0530.058-8.6%?14?10/29/18Rays Computational Intelligence Lab(RCIL)9?11?0?&?3?&?30-day moving average30-day moving
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