نتایج جستجو برای: rmse regression model

تعداد نتایج: 2331037  

2017
Aidi Li Xing Tan Wei Wu Hongbin Liu Jie Zhu

Knowledge about the spatial distribution of active-layer (AL) soil thickness is indispensable for ecological modeling, precision agriculture, and land resource management. However, it is difficult to obtain the details on AL soil thickness by using conventional soil survey method. In this research, the objective is to investigate the possibility and accuracy of mapping the spatial distribution ...

Journal: :Remote Sensing 2010
Heikki Laurila Mika Karjalainen Jouko Kleemola Juha Hyyppä

During 1996–2006, the Ministry of Agriculture and Forestry in Finland (MAFF), MTT Agrifood Research and the Finnish Geodetic Institute performed a joint remote sensing satellite research project. It evaluated the applicability of optical satellite (Landsat, SPOT) data for cereal yield estimations in the annual crop inventory program. Four Optical Vegetation Indices models (I: Infrared polynomia...

Journal: :Remote Sensing 2014
Toshiyuki Kobayashi Tsend-Ayush Javzandulam Ryutaro Tateishi

Global tree cover percentage is an important parameter used to understand the global environment. However, the available global percent tree cover products are few, and efforts to validate these maps have been limited. Therefore, producing a new broad-scale percent tree cover dataset is valuable. Our study was undertaken to map tree cover percentage, on a global scale, with better accuracy than...

2017
F. Biljecki M. Sindram

Building datasets (e.g. footprints in OpenStreetMap and 3D city models) are becoming increasingly available worldwide. However, the thematic (attribute) aspect is not always given attention, as many of such datasets are lacking in completeness of attributes. A prominent attribute of buildings is the year of construction, which is useful for some applications, but its availability may be scarce....

2013
G. Rasul D. Kumar

This study assessed the ability of two models, Local Linear Regression (LLR) and Artificial Neural Network (ANN) to estimate monthly potential evaporation from Pantagar, US Nagar (India) which falls under sub-humid and subtropical climatic zone. Observations of relative humidity, solar radiation, temperature, wind speed and evaporation have been used to train and test the developed models. A co...

Journal: :آب و خاک 0
قمر فدوی جواد بذرافشان

introduction: as the statistical time series are in short period and the meteorological station are not distributed well in mountainous area determining of climatic criteria are complex. therefore, in recent years interpolation methods for establishment of continuous climatic data have been considered. continuous daily maximum temperature data are a key factor for climate-crop modeling which is...

2016
Lefeng Qiu Kai Wang Wenli Long Ke Wang Wei Hu Gabriel S. Amable

Soil cadmium (Cd) contamination has attracted a great deal of attention because of its detrimental effects on animals and humans. This study aimed to develop and compare the performances of stepwise linear regression (SLR), classification and regression tree (CART) and random forest (RF) models in the prediction and mapping of the spatial distribution of soil Cd and to identify likely sources o...

2001
Pranab J. BARUAH Masayuki TAMURA

Concentrations of chlorophyll and suspended sediment are two important optically active parameters of inland water quality. In the open ocean, these two parameters can be effectively quantified by empirical algorithms relating remote sensor radiances to surface concentrations. In inland waters, however, the task becomes difficult due to the presence of suspended sediment and dissolved organic m...

2014
Jason Ting Swaroop Indra Ramaswamy

We apply principles and techniques of recommendation systems to develop a predictive model of how customers would rate businesses they have not been to. Using Yelp’s dataset, we extract collaborative and content based features to identify customer and restaurant profiles. We use generalized regression models, ensemble models, collaborative filtering and factorization machines. We evaluate the p...

2017
S. Moshrefi K. Shahriar

A rock failure criterion is very important for prediction of the ultimate strength in rock mechanics and geotechnics; it is determined for rock mechanics studies in mining, civil, and oil wellborn drilling operations. Also shales are among the most difficult to treat formations. Therefore, in this research work, using the artificial neural network (ANN), a model was built to predict the ultimat...

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