2014
DOI: 10.1007/s12524-014-0400-x
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Effects of Time-Duration on the Performance of the Spatial-Markov Model for Land use Change Forecasting

Abstract: Markov chain is one of the most widely used methods for land use change forecasting, however, it's a nonspatial model and few papers have discussed the effects of timeduration on its performance. In this paper, we first present the primary methodologies of the Spatial-Markov model, which endows the ordinary Markov chain with spatial dimension using spatial analysis techniques, and then explore the effects of forecasting time-duration on the model's performance. By taking Shandong province, China as a case stud… Show more

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Cited by 4 publications
(2 citation statements)
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“…The study of LUCC simulation at different temporal and spatial scales plays an important role in revealing the impact of human activities on regional ecological environment changes (Fan et al, 2022; Foley et al, 2005; Verburg et al, 2002). Currently, LUCC simulation is mainly implemented through the following models: (1) Quantitative prediction models, such as system dynamics (SD) model (Geng et al, 2017; Portela & Rademacher, 2001), Markov models (Hou et al, 2015; Wu et al, 2006), etc. These models predict the changes and change rates of various land use types on a macro‐scale, but their spatial distribution is not considered (Cao et al, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…The study of LUCC simulation at different temporal and spatial scales plays an important role in revealing the impact of human activities on regional ecological environment changes (Fan et al, 2022; Foley et al, 2005; Verburg et al, 2002). Currently, LUCC simulation is mainly implemented through the following models: (1) Quantitative prediction models, such as system dynamics (SD) model (Geng et al, 2017; Portela & Rademacher, 2001), Markov models (Hou et al, 2015; Wu et al, 2006), etc. These models predict the changes and change rates of various land use types on a macro‐scale, but their spatial distribution is not considered (Cao et al, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…The basic idea of direct prediction is assuming that land use scale growth in the future in line with the historical trend, combined with the previous land use data and variation characteristics, to predict the future scale of land use through a variety of parameters in the model fitting, such as exponential growth model [1], grey system model [2], Markov Model [3]. The basic idea of indirect prediction is to using driving factors of construction land expansion to predict the future scale, such as per capita multivariate statistical regression model [4], neural network model and genetic support vector machine [5].…”
Section: Introductionmentioning
confidence: 99%