Multifactor Prediction
of the Water Richness of Coal
Roof Aquifers Based on the Combination Weighting Method and TOPSIS
Model: A Case Study in the Changcheng No. 1 Coal Mine
Identifying the water richness of coal roof aquifers
is an important
and difficult goal of hydrogeological research to prevent and control
roof water disasters. To evaluate the water richness of roof sandstone
aquifers of the No. 1 coal seam in the Changcheng No. 1 coal mine,
a multifactor prediction method based on the fuzzy Delphi analytic
hierarchy process (FDAHP), entropy weight method (EWM), sum of squared
deviations (SSD), and Technique for Order Preference by Similarity
to an Ideal Solution (TOPSIS) was proposed. Multisource geological
data, including sandstone thickness, burial depth, lithological composition
index, core recovery, fault scale index, fault intersections and endpoint
density, and fold fractal dimension, were chosen as the primary indicators
for evaluating the water richness of roof sandstone aquifers. The
FDAHP and EWM were used to scientifically determine the subjective
and objective weight vectors of these seven main factors, and the
SSD was used to determine the optimal combination weights based on
the objective and subjective weight vectors. On this basis, the water
richness index (WRI) model was developed using the TOPSIS method to
rank the water richness of samples in the study area. A water richness
zoning map was created using the WRI values, revealing three zones:
the weak water richness zone, moderate water richness zone, and strong
water richness zone. Additionally, the map was refined by incorporating
hydrogeologic data collected during mining operations, including pumping
tests and actual water inrushes from roadways and working faces. It
is believed that the proposed WRI model is effective for predicting
the water richness of the roof sandstone aquifers of the No. 1 coal
seam in the Changcheng No. 1 coal mine based on the engineering practice
data used to validate the WRI model.