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ANN Based Rainfall Prediction—A Tool for Developing a Landslide Early Warning System

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TLDR
In this article, the authors proposed a reliable rainfall forecast mechanism using only temporal and spatial rainfall intensity data recorded at rain gauge stations located close to the landslide risk sections in Coonoor Several artificial neural network (ANN) based rainfall forecasting models were developed to forecast rainfall one day in advance at Coongoor Mean square error (MSE) and correlation coefficient (CC) were considered as the performance measures to compare the forecasting ability of the ANN models.
Abstract
Open image in new window The study area of this work, Nilgiris district, is located in the southern state of Tamil Nadu in India It receives heavy rainfall during South-west and North-east monsoons The laterite soil and the presence of a large number of cut slopes make the region a landslide prone area, highly susceptible to rainfall induced landslides This paper proposes a reliable rainfall forecast mechanism using only temporal and spatial rainfall intensity data recorded at rain gauge stations located close to the landslide risk sections in Coonoor Several artificial neural network (ANN) based rainfall forecasting models were developed to forecast rainfall one day in advance at Coonoor Mean square error (MSE) and correlation coefficient (CC) are considered as the performance measures to compare the forecasting ability of the ANN models Wavelet Elman model, which had all the input predictors, emerged as the best model Time delay neural network (TDNN) resulted in high correlation coefficient when the number of input predictors was limited Results prove that the proposed wavelet Elman network has a forecasting accuracy better than all other ANN models and is an appropriate network to choose when the number of input predictors increases This paper also describes the procedure adapted to develop a novel landslide early warning system based on the rainfall predicted by the best performing model and the rainfall threshold that exists for the study area The results demonstrate the successful generation of landslide early warning messages that coincide with the landslide incidences in Coonoor

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Citations
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Journal ArticleDOI

Emotional artificial neural networks (EANNs) for multi-step ahead prediction of monthly precipitation; case study: northern Cyprus

TL;DR: The obtained results showed the better performance of the EANN model in comparison with other models (FFNN and WANN) especially in three-step ahead prediction, which is the most important parameter of any hydrological study.
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Artificial Intelligence Based Ensemble Modeling for Multi-Station Prediction of Precipitation

TL;DR: The aim of ensemble precipitation prediction in this paper was to achieve the best performance via artificial intelligence (AI) based modeling and the averaging methods employing scenario 2 and non-linear ensemble method revealed higher prediction efficiency.
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The rainfall-induced landsliding in Western Serbia: A temporal prediction approach using Decision Tree technique

TL;DR: In this article, the authors focused on modeling rainfall-induced massive landsliding in the Western Serbia in the 2001-2014 period, where the Decision Tree algorithm was used to identify rainfall conditions that triggered landslides in the specified period.
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Multi-timescale drought prediction using new hybrid artificial neural network models

TL;DR: In this paper, new hybrid artificial neural network (ANN) models were used for predicting the groundwater resource index (GRI)-based drought at different timescales (6, 12, and 24 months) in Yazd plain, Iran.
Journal ArticleDOI

Effects of direct input–output connections on multilayer perceptron neural networks for time series prediction

TL;DR: The experimental results demonstrate that the BPNN–DIOC has better prediction accuracy compared to the conventional BPNN while the output layer bias has no significant effect, and the input-to-output connections can significantly improve the prediction ability of time series.
References
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Journal ArticleDOI

A warning system for rainfall-induced shallow failures

Pietro Aleotti
- 01 Jun 2004 - 
TL;DR: In this article, the authors identified the empirical triggering thresholds for the Piedmont Region Four meteoric events were selected and analysed (November 4-5-1994, July 7-8-1996, April 27-30-2000, and October 13-16-2000) and the triggering threshold is given by the expression: NI=−009ln[NCR]+054 (where NCR is the normalised cumulative critical rainfall, [mm/PMA]×100) In detail an operating procedure which is presently being verified and tested in the studied area is described
Journal ArticleDOI

Rainfall forecasting in space and time using a neural network

TL;DR: A neural network is developed to forecast rainfall intensity fields in space and time using a three-layer learning network with input, hidden, and output layers and is shown to perform well when a relatively large number of hidden nodes are utilized.
Journal ArticleDOI

Real-Time Landslide Warning During Heavy Rainfall

TL;DR: Although analysis after the storms suggests that modifications and additional development are needed, the system successfully predicted the times of major landslide events and could be used as a prototype for systems in other landslide-prone regions.
Journal ArticleDOI

Rainfall thresholds for the forecasting of landslide occurrence at regional scale

TL;DR: In this paper, a regional scale warning system for landslides that relies on a decisional algorithm based on the comparison between rainfall recordings and statistically defined thresholds was proposed, which can be easily implemented in other similar regions and countries where a sufficiently organized meteorological network is present.
Journal ArticleDOI

Quantitative assessment of landslide hazard along transportation lines using historical records

TL;DR: In this article, a quantitative landslide hazard model is presented for transportation lines, with an example for a road and railroad alignment, in parts of Nilgiri hills in southern India.
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