Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques

Abstract Background The accurate estimation of soil nutrient content is particularly important in view of its impact on plant growth and forest regeneration. In order to investigate soil nutrient content and quality for the natural regeneration of Dacrydium pectinatum communities in China, designing...

Full description

Bibliographic Details
Main Authors: Chunyan Wu, Yongfu Chen, Xiaojiang Hong, Zelin Liu, Changhui Peng
Format: Article
Language:English
Published: SpringerOpen 2020-05-01
Series:Forest Ecosystems
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40663-020-00232-5
id doaj-edfd13365a12417384bb1dc1d13f3f45
record_format Article
spelling doaj-edfd13365a12417384bb1dc1d13f3f452020-11-25T02:01:03ZengSpringerOpenForest Ecosystems2197-56202020-05-017111410.1186/s40663-020-00232-5Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniquesChunyan Wu0Yongfu Chen1Xiaojiang Hong2Zelin Liu3Changhui Peng4State Key Laboratory of Tree Genetics and Breeding, Key Laboratory of Tree Breeding and Cultivation of the State Forestry Administration, Research Institute of Forestry, Chinese Academy of ForestryResearch Institute of Forest Resource Information Techniques, Chinese Academy of ForestryHainan Bawangling National Natural ReserveDepartment of Biological Science, Institute of Environment Sciences, University of Quebec at MontrealDepartment of Biological Science, Institute of Environment Sciences, University of Quebec at MontrealAbstract Background The accurate estimation of soil nutrient content is particularly important in view of its impact on plant growth and forest regeneration. In order to investigate soil nutrient content and quality for the natural regeneration of Dacrydium pectinatum communities in China, designing advanced and accurate estimation methods is necessary. Methods This study uses machine learning techniques created a series of comprehensive and novel models from which to evaluate soil nutrient content. Soil nutrient evaluation methods were built by using six support vector machines and four artificial neural networks. Results The generalized regression neural network model was the best artificial neural network evaluation model with the smallest root mean square error (5.1), mean error (− 0.85), and mean square prediction error (29). The accuracy rate of the combined k-nearest neighbors (k-NN) local support vector machines model (i.e. k-nearest neighbors -support vector machine (KNNSVM)) for soil nutrient evaluation was high, comparing to the other five partial support vector machines models investigated. The area under curve value of generalized regression neural network (0.6572) was the highest, and the cross-validation result showed that the generalized regression neural network reached 92.5%. Conclusions Both the KNNSVM and generalized regression neural network models can be effectively used to evaluate soil nutrient content and quality grades in conjunction with appropriate model variables. Developing a new feasible evaluation method to assess soil nutrient quality for Dacrydium pectinatum, results from this study can be used as a reference for the adaptive management of rare and endangered tree species. This study, however, found some uncertainties in data acquisition and model simulations, which will be investigated in upcoming studies.http://link.springer.com/article/10.1186/s40663-020-00232-5Support vector machineKNNSVMGeneralized regression neural networkNutrient gradeRare and endangered tree species
collection DOAJ
language English
format Article
sources DOAJ
author Chunyan Wu
Yongfu Chen
Xiaojiang Hong
Zelin Liu
Changhui Peng
spellingShingle Chunyan Wu
Yongfu Chen
Xiaojiang Hong
Zelin Liu
Changhui Peng
Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques
Forest Ecosystems
Support vector machine
KNNSVM
Generalized regression neural network
Nutrient grade
Rare and endangered tree species
author_facet Chunyan Wu
Yongfu Chen
Xiaojiang Hong
Zelin Liu
Changhui Peng
author_sort Chunyan Wu
title Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques
title_short Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques
title_full Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques
title_fullStr Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques
title_full_unstemmed Evaluating soil nutrients of Dacrydium pectinatum in China using machine learning techniques
title_sort evaluating soil nutrients of dacrydium pectinatum in china using machine learning techniques
publisher SpringerOpen
series Forest Ecosystems
issn 2197-5620
publishDate 2020-05-01
description Abstract Background The accurate estimation of soil nutrient content is particularly important in view of its impact on plant growth and forest regeneration. In order to investigate soil nutrient content and quality for the natural regeneration of Dacrydium pectinatum communities in China, designing advanced and accurate estimation methods is necessary. Methods This study uses machine learning techniques created a series of comprehensive and novel models from which to evaluate soil nutrient content. Soil nutrient evaluation methods were built by using six support vector machines and four artificial neural networks. Results The generalized regression neural network model was the best artificial neural network evaluation model with the smallest root mean square error (5.1), mean error (− 0.85), and mean square prediction error (29). The accuracy rate of the combined k-nearest neighbors (k-NN) local support vector machines model (i.e. k-nearest neighbors -support vector machine (KNNSVM)) for soil nutrient evaluation was high, comparing to the other five partial support vector machines models investigated. The area under curve value of generalized regression neural network (0.6572) was the highest, and the cross-validation result showed that the generalized regression neural network reached 92.5%. Conclusions Both the KNNSVM and generalized regression neural network models can be effectively used to evaluate soil nutrient content and quality grades in conjunction with appropriate model variables. Developing a new feasible evaluation method to assess soil nutrient quality for Dacrydium pectinatum, results from this study can be used as a reference for the adaptive management of rare and endangered tree species. This study, however, found some uncertainties in data acquisition and model simulations, which will be investigated in upcoming studies.
topic Support vector machine
KNNSVM
Generalized regression neural network
Nutrient grade
Rare and endangered tree species
url http://link.springer.com/article/10.1186/s40663-020-00232-5
work_keys_str_mv AT chunyanwu evaluatingsoilnutrientsofdacrydiumpectinatuminchinausingmachinelearningtechniques
AT yongfuchen evaluatingsoilnutrientsofdacrydiumpectinatuminchinausingmachinelearningtechniques
AT xiaojianghong evaluatingsoilnutrientsofdacrydiumpectinatuminchinausingmachinelearningtechniques
AT zelinliu evaluatingsoilnutrientsofdacrydiumpectinatuminchinausingmachinelearningtechniques
AT changhuipeng evaluatingsoilnutrientsofdacrydiumpectinatuminchinausingmachinelearningtechniques
_version_ 1724959131025014784