4.7 Article

Estimation of rainfed maize transpiration under various mulching methods using modified Jarvis-Stewart model and hybrid support vector machine model with whale optimization algorithm

Related references

Note: Only part of the references are listed.
Article Agronomy

Estimation of daily maize transpiration using support vector machines, extreme gradient boosting, artificial and deep neural networks models

Junliang Fan et al.

Summary: Accurate estimation of plant transpiration (T) is crucial for agricultural production, and this study investigated the use of machine learning models to estimate daily T of summer maize. Incorporating soil water content and leaf area index variables improved model performance, with the deep neural network (DNN) model slightly outperforming others.

AGRICULTURAL WATER MANAGEMENT (2021)

Article Agronomy

Evapotranspiration partitioning and water productivity of rainfed maize under contrasting mulching conditions in Northwest China

Jing Zheng et al.

Summary: Soil mulching can improve crop yield and water productivity by promoting plant transpiration and suppressing soil evaporation.

AGRICULTURAL WATER MANAGEMENT (2021)

Article Agronomy

A novel hybrid WOA-XGB model for estimating daily reference evapotranspiration using local and external meteorological data: Applications in arid and humid regions of China

Shicheng Yan et al.

Summary: The study proposed a novel hybrid XGB model with WOA algorithm to estimate daily ET0 in different regions of China, showing better performance than conventional models and providing more accurate estimation of ET0 for irrigation scheduling and water resource planning.

AGRICULTURAL WATER MANAGEMENT (2021)

Article Agronomy

Closing yield gaps in oil palm production systems in Ghana through Best Management Practices

Tiemen Rhebergen et al.

EUROPEAN JOURNAL OF AGRONOMY (2020)

Article Agronomy

Transpiration of female and male parents of seed maize in northwest China

Shujing Qin et al.

AGRICULTURAL WATER MANAGEMENT (2019)

Article Agronomy

Are water footprints accurate enough to be useful? A case study for maize (Zea mays L.)

M. van der Laan et al.

AGRICULTURAL WATER MANAGEMENT (2019)

Article Agriculture, Multidisciplinary

Evaluation of artificial intelligence models for actual crop evapotranspiration modeling in mulched and non-mulched maize croplands

Dahua Tang et al.

COMPUTERS AND ELECTRONICS IN AGRICULTURE (2018)

Article Geochemistry & Geophysics

ANFIS, SVM and ANN soft-computing techniques to estimate daily global solar radiation in a warm sub-humid environment

Victor H. Quej et al.

JOURNAL OF ATMOSPHERIC AND SOLAR-TERRESTRIAL PHYSICS (2017)

Article Engineering, Civil

Comparing three models to estimate transpiration of desert shrubs

Shiqin Xu et al.

JOURNAL OF HYDROLOGY (2017)

Article Agronomy

An Empirical Calibration for Heat-Balance Sap-Flow Sensors in Maize

Yueyue Wang et al.

AGRONOMY JOURNAL (2017)

Article Computer Science, Interdisciplinary Applications

The Whale Optimization Algorithm

Seyedali Mirjalili et al.

ADVANCES IN ENGINEERING SOFTWARE (2016)

Article Agronomy

Multi-scale evapotranspiration of summer maize and the controlling meteorological factors in north China

Baozhong Zhang et al.

AGRICULTURAL AND FOREST METEOROLOGY (2016)

Article Agronomy

Effect of different furrow and plant spacing on yield and water use efficiency of maize

Kidane Welde et al.

AGRICULTURAL WATER MANAGEMENT (2016)

Article Environmental Sciences

Modeling Effects of Canopy and Roots on Soil Moisture and Deep Drainage

Junliang Fan et al.

VADOSE ZONE JOURNAL (2015)

Review Agronomy

A review of approaches for evapotranspiration partitioning

D. Kool et al.

AGRICULTURAL AND FOREST METEOROLOGY (2014)

Article Engineering, Civil

Measuring and modeling maize evapotranspiration under plastic film-mulching condition

Sien Li et al.

JOURNAL OF HYDROLOGY (2013)

Article Agronomy

Responses of surface conductance to forest environments in the Far East

Kazuho Matsumoto et al.

AGRICULTURAL AND FOREST METEOROLOGY (2008)

Article Agronomy

Dependence of stomatal conductance on leaf chlorophyll concentration and meteorological variables

K Matsumoto et al.

AGRICULTURAL AND FOREST METEOROLOGY (2005)