Âé¶¹ÒùÔº

March 31, 2025

AI framework achieves 95.6% accuracy in predicting landslide-prone zones

The map shows the different levels of landslide susceptibility in the study area in the northernmost region of West Bengal, India. Credit: Amit Kumar Srivastava / ZALF
× close
The map shows the different levels of landslide susceptibility in the study area in the northernmost region of West Bengal, India. Credit: Amit Kumar Srivastava / ZALF

Landslides pose a significant threat to people and the environment worldwide. Researchers from the Leibniz Center for Agricultural Landscape Research (ZALF), together with international partners, have developed a new framework that significantly improves landslide prediction using machine learning methods.

The model can analyze data and create precise maps highlighting landslide-prone zones. It achieves an impressive 95.6% accuracy in predicting landslide risks. The results are in the journal Scientific Reports.

How does the model work?

To better predict landslide risks, the model uses a combination of six different machine learning methods.

A simple way to understand this is to compare it to a . If you want to predict tomorrow's weather, you analyze past weather patterns and look for indicators—like dark clouds and strong winds often signaling rain.

This model does something similar—but for landslides and on a much larger scale. It processes vast amounts of environmental data, such as:

The model compares this information with past landslide events, recognizing patterns that indicate high-risk areas.

A meta-classifier then leverages the strengths of multiple AI models by combining their most accurate predictions to enhance overall performance. It works in three key steps:

  1. Training base models—Several machine learning models (e.g., , support vector machine, random forest, extremely randomized trees, gradient boosting, and extreme gradient boosting) are trained independently on the dataset.
  2. Generating meta-features—The predictions from these base models are used as new input features.
  3. Training the meta classifier—A final predictor (e.g., logistic regression) is trained on these aggregated predictions to make the final decision.

"With our new prediction models, we can identify landslide-prone areas much more accurately than before," explains Krishnagopal Halder and Dr. Amit Kumar Srivastava from ZALF. "This is an important step towards better protecting people and enabling sustainable land use."

Get free science updates with Science X Daily and Weekly Newsletters — to customize your preferences!

Why is this model so important?

Landslides often occur suddenly and can cause significant damage. Traditional risk assessment methods are often inaccurate or take a long time to complete. The new model can analyze vast amounts of data quickly and achieves an impressive 95.6% accuracy in predicting landslide risks.

The research team tested the model in the Sub-Himalayan region of West Bengal, India—an area heavily affected by landslides. The analysis revealed that high-risk zones are primarily located in areas with , unstable geological structures, and intense land use, such as deforestation and urbanization.

By using this new technology, authorities and disaster management organizations can take early action to secure vulnerable areas and issue warnings in advance.

The method can be applied not only to but also to predicting other natural hazards such as floods or land subsidence. In the future, the model could be further refined and adapted for global use.

More information: Krishnagopal Halder et al, Improving landslide susceptibility prediction through ensemble recursive feature elimination and meta-learning framework, Scientific Reports (2025).

Journal information: Scientific Reports

Provided by Leibniz-Zentrum für Agrarlandschaftsforschung (ZALF) e.V.

Load comments (0)

This article has been reviewed according to Science X's and . have highlighted the following attributes while ensuring the content's credibility:

fact-checked
peer-reviewed publication
proofread

Get Instant Summarized Text (GIST)

A new AI framework achieves 95.6% accuracy in predicting landslide-prone zones by analyzing environmental data such as rainfall, soil composition, and human activities. It uses a meta-classifier that combines predictions from multiple machine learning models to enhance accuracy. Tested in the Sub-Himalayan region, the model identifies high-risk areas, aiding in early warnings and disaster management. This approach could also be adapted for other natural hazards.

This summary was automatically generated using LLM.