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Prediction of vegetation dynamics using NDVI time series data and LSTM

机译:使用NDVI时间序列数据和LSTM预测植被动态

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Abstract Understanding and analyzing the changes in vegetation cover is very important in several aspects including climatic changes, water budget, ecological balance and specially to undertake necessary conservation measures. The concept of neural network has gained much significance in the analysis of vegetation dynamics using remote sensing satellite data. In the current study an attempt has been made to predict the vegetation dynamics using MODIS NDVI time series data sets and long short term memory network, an advanced technique adapted from the artificial neural network. The dataset of 861 NDVI images from January 2000 to June 2016 is used for making the time series. The data is segregated into three sets which comprises of training set (70%), validation set (20%), and testing set (10%). To check the reliability of the experiment we have finalised two different regions after extensive research for investigation. These include different terrains in the Great Nicobar Islands, one region along the coast where vegetation has severe ecological damage due to 2004 Indian Ocean tsunami and the other, an interior region which remained imperturbable during the tsunami. Long short term memory network, an advanced neural network is trained with these NDVI values for both the regions separately to predict the future vegetation dynamics. To measure the accuracy of the LSTM network, root mean square error is calculated. The resulting plots from both the experiments indicate that the long short-term memory neural network follows the series in addition to coinciding with the required time series. Also, an unanticipated change in the trend of the NDVI series were well adapted by the network and was able to predict the future NDVI values with good accuracy maintaining RMSE less than 0.03 without providing any supplementary data. By adopting the prescribed method in the paper, anticipation of vegetation changes can be done accurately much ahead of time and take proactive measures accordingly to safeguard and improve the vegetation in any area.
机译:摘要在包括气候变化,水预算,生态平衡以及专门承接必要的保护措施的几个方面,摘要理解和分析植被覆盖的变化非常重要。使用遥感卫星数据分析植被动态的神经网络的概念具有重要意义。在目前的研究中,已经尝试使用MODIS NDVI时间序列数据集和长短短期存储网络来预测植被动态,这是一种从人工神经网络调整的先进技术。 2000年1月至2016年6月的861个NDVI图像的数据集用于制作时间序列。将数据分为三组,包括培训集(70%),验证集(20%)和测试集(10%)。为了检查实验的可靠性,我们在广泛的调查后完成了两种不同的地区。这些包括伟大的尼古拉群岛的不同地形,沿着海岸的一个地区,由于2004年印度洋海啸和另一个内部区域,植被具有严重的生态损害,这是在海啸期间保持不稳定的内部区域。长期内存网络,先进的神经网络培训,这些NDVI值对于分别的区域,以预测未来的植被动态。为了测量LSTM网络的准确性,计算根均方误差。来自两个实验的所得到的图表明,除了将所需时间序列恰逢其序列之外,长短期内存神经网络还遵循该系列。此外,NDVI系列趋势的意外变化由网络很好地适应,并且能够在不提供任何补充数据的情况下预测低于0.03的良好准确度的未来NDVI值。通过采用本文规定的方法,可以提前准确地完成植被变化的预期,并相应地采取积​​极措施,以保护和改善任何区域的植被。

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