Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam
Tam Dao National Park (TDNP) is a remaining primary forest that supports some of the highest levels of biodiversity in Vietnam. Forest conversion due to illegal logging and agricultural expansion is a major problem that is hampering biodiversity conservation efforts in the TDNP region. Yet, areas vu...
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doaj-09547d133e1b47198b70f508bfda137b2020-11-24T23:32:41ZengMDPI AGRemote Sensing2072-42922010-04-01251249127210.3390/rs2051249Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, VietnamDuong Dang KhoiYuji MurayamaTam Dao National Park (TDNP) is a remaining primary forest that supports some of the highest levels of biodiversity in Vietnam. Forest conversion due to illegal logging and agricultural expansion is a major problem that is hampering biodiversity conservation efforts in the TDNP region. Yet, areas vulnerable to forest conversion are unknown. In this paper, we predicted areas vulnerable to forest changes in the TDNP region using multi-temporal remote sensing data and a multi-layer perceptron neural network (MLPNN) with a Markov chain model (MLPNN-M). The MLPNN-M model predicted increasing pressure in the remaining primary forest within the park as well as on the secondary forest in the surrounding areas. The primary forest is predicted to decrease from 18.03% in 2007 to 15.10% in 2014 and 12.66% in 2021. Our results can be used to prioritize locations for future biodiversity conservation and forest management efforts. The combined use of remote sensing and spatial modeling techniques provides an effective tool for monitoring the remaining forests in the TDNP region. http://www.mdpi.com/2072-4292/2/5/1249/multi-layer perceptron neural networkMarkov chaindeforestationVietnam |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Duong Dang Khoi Yuji Murayama |
spellingShingle |
Duong Dang Khoi Yuji Murayama Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam Remote Sensing multi-layer perceptron neural network Markov chain deforestation Vietnam |
author_facet |
Duong Dang Khoi Yuji Murayama |
author_sort |
Duong Dang Khoi |
title |
Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam |
title_short |
Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam |
title_full |
Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam |
title_fullStr |
Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam |
title_full_unstemmed |
Forecasting Areas Vulnerable to Forest Conversion in the Tam Dao National Park Region, Vietnam |
title_sort |
forecasting areas vulnerable to forest conversion in the tam dao national park region, vietnam |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2010-04-01 |
description |
Tam Dao National Park (TDNP) is a remaining primary forest that supports some of the highest levels of biodiversity in Vietnam. Forest conversion due to illegal logging and agricultural expansion is a major problem that is hampering biodiversity conservation efforts in the TDNP region. Yet, areas vulnerable to forest conversion are unknown. In this paper, we predicted areas vulnerable to forest changes in the TDNP region using multi-temporal remote sensing data and a multi-layer perceptron neural network (MLPNN) with a Markov chain model (MLPNN-M). The MLPNN-M model predicted increasing pressure in the remaining primary forest within the park as well as on the secondary forest in the surrounding areas. The primary forest is predicted to decrease from 18.03% in 2007 to 15.10% in 2014 and 12.66% in 2021. Our results can be used to prioritize locations for future biodiversity conservation and forest management efforts. The combined use of remote sensing and spatial modeling techniques provides an effective tool for monitoring the remaining forests in the TDNP region. |
topic |
multi-layer perceptron neural network Markov chain deforestation Vietnam |
url |
http://www.mdpi.com/2072-4292/2/5/1249/ |
work_keys_str_mv |
AT duongdangkhoi forecastingareasvulnerabletoforestconversioninthetamdaonationalparkregionvietnam AT yujimurayama forecastingareasvulnerabletoforestconversioninthetamdaonationalparkregionvietnam |
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