Abstract

The accurate and reliable prediction of groundwater depth is the basis of the sustainable utilization of regional groundwater resources. However, the complexity of the prediction has been ignored in previous studies of regional groundwater depth system analysis and prediction, making it difficult to realize the scientific management of groundwater resources. To address this defect, taking complexity diagnosis as the research foundation, this paper proposes a new coupling forecast strategy for evaluating groundwater depth based on empirical mode decomposition (EMD) and a radial basis function neural network (RBFNN). The data used for complexity analysis and modelling are the monthly groundwater depth series monitoring data from 15 long-term monitoring wells from 1997 to 2007, which were collected from the Jiansanjiang Administration of Heilongjiang Agricultural Reclamation in China. The calculation results of the comprehensive complexity index for each groundwater depth series obtained are based on wavelet theory, fractal theory, and the approximate entropy method. The monthly groundwater depth sequence of District 8 of Farm Nongjiang, which has the highest complexity among the five farms in the Jiansanjiang Administration midland, was chosen as the modelling sample series. The groundwater depth series of District 8 of Farm Nongjiang was separated into five intrinsic mode function (IMF) sequences and a remainder sequence by applying the EMD method, which revealed that local groundwater depth has a significant one-year periodic character and an increasing trend. The RBFNN was then used to forecast and stack each EMD separation sequence. The results suggest that the future groundwater depth will remain at approximately 10 m if the past pattern of water use continues, exceeding the ideal depth of groundwater. Thus, local departments should take appropriate countermeasures to conserve groundwater resources effectively.

Highlights

  • Groundwater is an important foundational resource to support sustainable regional social and economic development

  • ToTo fully consider thethe mutual influence ofof the groundwater on each farm, we adopted the above six methods to measure the monthly groundwater depth each farm, we adopted the above six methods to measure the monthly groundwater depth sequence sequence in complexity in Jiansanjiang

  • This paper introduced entropy theory, wavelet theory, fractal theory and other methods to study groundwater depth sequence complexity in the central subarea of Jiansanjiang Administration, and the results are satisfactory

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Summary

Introduction

Groundwater is an important foundational resource to support sustainable regional social and economic development. Water 2016, 8, 340 between the supply and demand of groundwater resources has become increasingly prominent, becoming the main limiting factor of regional agricultural development. Driven by high-intensity agricultural development, the regional complexity of the groundwater resource system is becoming increasingly prominent [1], evoking many ecological environmental problems such as decreasing groundwater depth and deteriorating water quality. The conventional prediction method ignores the complexity of information related to the changing patterns of groundwater depth, resulting in useless prediction results. Against this background, it is becoming increasingly urgent in the field of hydrology to clarify the complex information related to regional groundwater depth and analyse the changes in groundwater depth

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