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Volcanic Lithology Logging Identification Based on ADASYN-KNN-Random Forest Ensemble Model Taking the Carboniferous System on the Hanging Wall of Kebai Fault Zone as an Example

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NIAID Data Ecosystem2026-05-02 收录
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资源简介:
This dataset contains the following files to support the research paper "Volcanic Lithology Logging Identification Based on ADASYN-KNN-Random Forest Ensemble Model Taking the Carboniferous System on the Hanging Wall of Kebai Fault Zone as an Example": Raw_Data.xlsx: Thin-Section Data: High-resolution measurements/images of volcanic rock samples with lithology labels (e.g., basalt, andesite). Logging Data: Corresponding well-logging responses (gamma ray, density, neutron porosity) for each sample. Columns: Sample_ID, Depth (m), GR (API), DEN (g/cm³), CNL (%), Lithology_Label, Mineral_Composition (%). ADASYN_Resampled_Data.xlsx: Balanced dataset generated after applying ADASYN (Adaptive Synthetic Sampling) oversampling to address class imbalance. Includes synthetic samples for minority lithology classes. ML_Code.zip: ADASYN_Oversampling.py: Python script for adaptive oversampling (uses imbalanced-learn). KNN_RF_Classification.py: Combined script for KNN and Random Forest training/prediction. Requirements.txt: Dependencies (e.g., Python 3.13, pandas, scikit-learn).
创建时间:
2025-04-10
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