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RESEARCH ARTICLE

Modelling and prediction of soil water contents at field capacity and permanent wilting point of dryland cropping soils

M. A. Rab A E , S. Chandra A , P. D. Fisher A , N. J. Robinson B , M. Kitching C , C. D. Aumann A and M. Imhof D
+ Author Affiliations
- Author Affiliations

A Future Farming System Research Division, Department of Primary Industries, 255 Ferguson Road, Tatura, Vic. 3616, Australia.

B Future Farming System Research Division, Department of Primary Industries, Cnr Midland Highway and Taylor Street, Epsom, Vic. 3554, Australia.

C Future Farming System Research Division, Department of Primary Industries, 621 Sneydes Road, Werribee, Vic. 3030, Australia.

D Future Farming System Research Division, Department of Primary Industries, 1301 Hazeldean Road, Ellinbank, Vic. 3821, Australia.

E Corresponding author. Email: abdur.rab@dpi.vic.gov.au

Soil Research 49(5) 389-407 https://doi.org/10.1071/SR10160
Submitted: 3 August 2010  Accepted: 8 March 2011   Published: 12 July 2011

Abstract

Field capacity (FC) and permanent wilting point (PWP) are two critical input parameters required in various biophysical models. There are limited published data on FC and PWP of dryland cropping soils across north-western Victoria. Direct measurements of FC and PWP are time-consuming and expensive. Reliable prediction of FC and PWP from their functional relationships with routinely measured soil properties can help to circumvent these constraints. This study provided measured data on FC using undisturbed samples and PWP as functions of geomorphological unit, soil type, and soil texture class for dryland cropping soils of north-western Victoria. We used a balanced, nested sampling strategy and developed functional relationships of FC and PWP with routinely measured soil properties using residual maximum likelihood based mixed-effects regression modelling. Using the data, we also tested the adequacy of nine published pedotransfer functions (PTFs) in predicting FC and PWP.

Significant differences were observed among the three soil types and nine texture classes for most soil properties. FC and PWP were higher for Grey Vertosols (FC 43.7% vol, PWP 29.1% vol) than Hypercalcic Calcarosols (38.4%, 23.5%) and Red Sodosols (20.2%, 9.2%). Of the several functional relationships developed for prediction of FC and PWP, a quadratic single-predictor model based on dg (geometric mean particle size diameter) performed better than other models for both FC and PWP. It was nearly bias-free, with a root mean square error (RMSE) of 3.18% vol and an R2 of 93% for FC, and RMSE 3.47% vol and R2 89% for PWP. Another useful model for FC was a slightly biased, two-predictor quadratic model based on clay and silt, with RMSE 3.14% vol and R2 94%. For PWP, two other possibly useful, though slightly biased, models included a single-predictor quadratic model based on clay (RMSE 3.45% vol, R2 89%) and a three-predictor model based on clay, silt, and σg (geometric standard deviation of particle size diameter) (RMSE 3.27% vol, R2 90%). We observed a strong quadratic relationship of FC with PWP (RMSE 1.61% vol, R2 98%). This suggests the possibility to further improve the prediction of FC indirectly through PWP. These predictive models for FC and PWP, though developed for the dryland cropping soils of north-western Victoria, may be applicable to other regions with similar soil and climatic conditions. Some validation is desirable before these models are confidently applied in a new situation. Of the nine published PTFs, the multiple linear regression and artificial neural network based NTh5 for FC and NTh3 and CAM for PWP performed better on our data for the prediction of FC and PWP. The root mean square deviation of these PTFs, for both FC and PWP, was higher than the RMSE of our models. Our models are therefore likely to perform better under the dryland cropping soils of north-western Victoria than these PTFs. As a safeguard against arriving at optimistic inferences, we suggest that the modelling of functional relationships needs to account for the hierarchical structure of the sampling design using appropriate mixed effects regression models.

Additional keywords: mixed effects regression, nested sampling design, plant-available water capacity, PTFs, residual maximum likelihood, soil texture, soil type, soil water retention.


References

Arnold JG, Srinivasin R, Muttiah RS, Williams JR (1998) Large area hydrologic modeling and assessment: Part I. Model development. Journal of the American Water Resources Association 34, 73–89.
Large area hydrologic modeling and assessment: Part I. Model development.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK1cXitleju74%3D&md5=f2d7335861dfb90614ad4438bc56dbfcCAS |

Bache BW, Frost CA, Inkson RHE (1981) Moisture release characteristics and porosity of twelve Scottish soil series and their variability. Journal of Soil Science 32, 505–520.
Moisture release characteristics and porosity of twelve Scottish soil series and their variability.Crossref | GoogleScholarGoogle Scholar |

Bauer A, Black AL (1981) Soil carbon, nitrogen, and bulk density comparison in two cropland tillage systems after 25 years and in virgin grassland. Soil Science Society of America Journal 45, 1166–1170.
Soil carbon, nitrogen, and bulk density comparison in two cropland tillage systems after 25 years and in virgin grassland.Crossref | GoogleScholarGoogle Scholar |

Better Soils (2005) Better soils. Module 5: Managing soil moisture, 5.1 Soil water holding capacity. Available at: www.bettersoils.com.au/module5/5_1.htm

Beverly C, Bari M, Christy B, Hocking M, Smettem K (2005) Predicted salinity impacts from land use change: a comparison between rapid assessment approaches and a detailed modelling framework. Australian Journal of Experimental Agriculture 45, 1453–1469.
Predicted salinity impacts from land use change: a comparison between rapid assessment approaches and a detailed modelling framework.Crossref | GoogleScholarGoogle Scholar |

Beverly C, Vigiak O, Christy B, Hocking M, Whitford J, Roberts A (2009) An evaluation of several approaches to estimate impacts of landuse change on nutrient and hydrologic balances. In ‘18th World IMACS/ MODSIM Congress’. Cairns, Qld, 13–17 July 2009. (Eds RS Anderssen, RD Braddock, LTH Newham) (Modelling and Simulation Society of Australia and New Zealand and International Association for Mathematics and Computers) Available at: http://mssanz.org.au/modsim09

Bouma J (1989) Using soil survey data for quantitative land evaluation. Advances in Soil Science 9, 177–213.

Bristow KL, Smettem KRJ, Ross PJ, Ford EJ, Roth C, Verburg K (1997) Obtaining hydraulic properties for soil water balance models: some pedotransfer functions for tropical Australia. In ‘Proceedings International Workshop on the Characterization and Measurement of the Hydraulic Properties of Unsaturated Porous Media’. (Eds MTh van Genuchten, FJ Leij) pp. 1103–1120. (University of California: Riverside, CA)

Bruand A (2004) Preliminary grouping of soils. In ‘Development of pedotransfer functions in soil hydrology’. (Eds Y Pachepsky, WJ Rawls) pp. 159–172. (Elsevier: Amsterdam)

Calhoun EG, Hammond LC, Caldwell RE (1973) Influence of particle size and organic matter on water retention in selected Florida soils. Proceedings – Soil and Crop Science Society of Florida 32, 111–113.

Campbell GS (1974) A simple model for determining unsaturated conductivity from moisture retention data. Soil Science 117, 311–314.
A simple model for determining unsaturated conductivity from moisture retention data.Crossref | GoogleScholarGoogle Scholar |

Campbell GS (1985) ‘Soil physics with BASIC: transport models for soil-plant systems.’ (Elsevier Science Publishers: Amsterdam, The Netherlands)

Cock GJ (1985) Moisture characteristics of irrigated Mallee soils in South Australia. Australian Journal of Experimental Agriculture 25, 209–213.
Moisture characteristics of irrigated Mallee soils in South Australia.Crossref | GoogleScholarGoogle Scholar |

Cotching WE, Lynch S, Kidd DB (2009) Dominant soil orders in Tasmania: distribution and selected properties. Australian Journal of Soil Research 47, 537–548.

Cresswell HP, Paydar Z (1996) Water retention in Australian soils. I. Description and prediction using parametric functions. Australian Journal of Soil Research 34, 195–212.
Water retention in Australian soils. I. Description and prediction using parametric functions.Crossref | GoogleScholarGoogle Scholar |

DPI (2008) Department of Primary Industries, Priorities for Action: Victoria’s Grains Industry 2005–08. Available at: www.dpi.vic.gov.au/dpi/nrenfa.nsf/93a98744f6ec41bd4a256c8e00013aa9/9be69b498717259fca25730f00196265/$FILE/GIS06.pdf

Forrest JA, Beatty J, Hignet CT, Pickering JH, Williams RGP (1985) A survey of the physical properties of wheatland soils in eastern Australia. CSIRO Australia Division of Soils, Divisional Report No. 78.

Galwey NW (2006) ‘Introduction to mixed modelling.’ (John Wiley & Sons: West Sussex, England)

Geeves GW, Cresswell HP, Murphy BW, Gessler PE, Chartres CJ, Little IP, Bowman GM (1995) The physical, chemical and morphological properties of soils in the wheat-belt of southern NSW and northern Victoria. NSW Department of Conservation and Land Management/CSIRO Australia Division of Soils Occasional Report.

Gupta SC, Larson WE (1979) Estimating soil water retention characteristics from particle size distribution, organic matter content, and bulk density. Water Resources Research 15, 1633–1635.
Estimating soil water retention characteristics from particle size distribution, organic matter content, and bulk density.Crossref | GoogleScholarGoogle Scholar |

Hall DG, Reeve MJ, Thomasson AJ, Wright VF (1977) Water retention, porosity and density of field soils. Soil Survey of England and Wales. Harpenden, Technical Monograph No. 9.

Hoadley B (2001) Comment on “Statistical modelling: the two cultures” by Leo Breiman. Statistical Science 16, 220–224.

Hochman Z, Dalgliesh NP, Bell KL (2001) Contribution of soil and crop factors to plant available soil water capacity of annual crops on Black and Grey Vertosols. Australian Journal of Soil Research 52, 955–961.

Hollis JM, Jones RJA, Palmer RC (1977) The effect of organic matter and particle size on the water retention properties of some soils in the West Midlands of England. Geoderma 17, 225–238.
The effect of organic matter and particle size on the water retention properties of some soils in the West Midlands of England.Crossref | GoogleScholarGoogle Scholar |

Iqbal J, Read JJ, Thomasson AJ, Jenkins JN (2005) Relationships between soil–landscape and dryland cotton lint yield. Soil Science Society of America Journal 69, 872–882.
Relationships between soil–landscape and dryland cotton lint yield.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD2MXkt1Cgtrs%3D&md5=7f01e0d320b755a98602afa5e17b88e6CAS |

Isbell RF (2002) ‘The Australian Soil Classification.’ (CSRIO Publishing: Melbourne)

Kay BD, da Silva AP, Baldock AP (1997) Sensitivity of soil structure to changes in organic carbon content: predictions using pedotransfer functions. Canadian Journal of Soil Science 77, 655–667.

Keating BA, Carberry PS, Hammer GL, Probert ME, Robertson MJ, Holzworth D, Huth NI, Hargreaves JNG, Meinke H, Hochman Z, McLean G, Verburg K, Snow V, Dimes JP, Silburn M, Wang E, Brown S, Bristow KL, Asseng S, Chapman S, McCown RL, Freebairn DM, Smith CJ (2003) An overview of APSIM, a model designed for farming systems simulation. European Journal of Agronomy 18, 267–288.
An overview of APSIM, a model designed for farming systems simulation.Crossref | GoogleScholarGoogle Scholar |

King BA, Stark JC (2005) Spatial variability considerations in interpreting soil moisture measurements for irrigation scheduling. Available at: http://info.ag.uidaho.edu/pdf/BUL/BUL0837.pdf

Leeper GW (1974) ‘Introduction to soil science.’ 4th edn (Melbourne University Press: Melbourne)

McCown RL, Hammer GL, Hargreaves JNG, Holzworth DP, Freebairn DM (1996) APSIM: a novel software system for model development, model testing, and simulation in agricultural systems research. Agricultural Systems 50, 255–271.
APSIM: a novel software system for model development, model testing, and simulation in agricultural systems research.Crossref | GoogleScholarGoogle Scholar |

McIntyre D, Loveday J (1974) Methods for analysis of irrigated soils. 11. Particle size analysis. Commonwealth Bureau of Soils Technical Communication No. 54. pp. 88–99.

Minasny B, McBratney AB (2002) The neuro-m method for fitting neural network parametric pedotransfer functions. Soil Science Society of America Journal 66, 352–361.
The neuro-m method for fitting neural network parametric pedotransfer functions.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD38XlvVCmsL8%3D&md5=ef512ee11be4dd7c327864e24822d076CAS |

Minasny B, McBratney AB, Bristow KL (1999) Comparison of different approaches to the development of pedotransfer functions for water-retention curves. Geoderma 93, 225–253.
Comparison of different approaches to the development of pedotransfer functions for water-retention curves.Crossref | GoogleScholarGoogle Scholar |

Moore AD, Donnelly JR, Freer M (1997) GRAZPLAN: decision support systems for Australian grazing enterprises. III. Growth and soil moisture submodels, and the GrassGro DSS. Agricultural Systems 55, 535–582.
GRAZPLAN: decision support systems for Australian grazing enterprises. III. Growth and soil moisture submodels, and the GrassGro DSS.Crossref | GoogleScholarGoogle Scholar |

Murphy SR, Lodge GM (2001) Soil water characteristics of a red chromosol and brown vertosol and pasture growth. In ‘Proceedings of the 10th Australian Agronomy Conference’. Hobart, Tas. (Agronomy Society of Australia) Available at: www.regional.org.au/au/asa/2001/2/b/murphy1.htm

Nelson DW, Sommers LE (1989) Total carbon, organic carbon, and organic matter. In ‘Methods of soil analysis: Part-2: Chemical and microbiological properties’. 2nd edn (Eds AL Page, RH Miller, DR Keeney) pp. 539–579. (American Society of Agronomy: Madison, WI)

Nemes A, Wösten JHM, Lilly A, Voshaar JHO (1999) Evaluation of different procedures to interpolate particle-size distributions to achieve compatibility within soil databases. Geoderma 90, 187–202.
Evaluation of different procedures to interpolate particle-size distributions to achieve compatibility within soil databases.Crossref | GoogleScholarGoogle Scholar |

Pachepsky YA, Timlin D, Varallyay G (1996) Artificial neural networks to estimate soil water retention from easily measurable data. Soil Science Society of America Journal 60, 727–733.
Artificial neural networks to estimate soil water retention from easily measurable data.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK28XjtFanurc%3D&md5=4ce4b46d368c0bd471cf7f0d04b1deffCAS |

Patterson HD, Thompson R (1971) Recovery of inter-block information when block sizes are unequal. Biometrika 58, 545–554.
Recovery of inter-block information when block sizes are unequal.Crossref | GoogleScholarGoogle Scholar |

Prebble RE (1970) Physical properties from 17 soil groups in Queensland. CSIRO Australia Division of Soils, Technical Memorandum 10170.

Rab MA, Fisher PD, Armstrong RD, Abuzar M, Robinson NJ, Chandra S (2009) Advances in precision agriculture in south-eastern Australia, Part IV: spatial variability of plant available water capacity of soil across site-specific management zones. Crop & Pasture Science 60, 885–900.
Advances in precision agriculture in south-eastern Australia, Part IV: spatial variability of plant available water capacity of soil across site-specific management zones.Crossref | GoogleScholarGoogle Scholar |

Ratliff LF, Ritchie JT, Cassel DK (1983) A survey of field-measured limits of soil water availability and related to laboratory-measured properties. Soil Science Society of America Journal 47, 770–775.
A survey of field-measured limits of soil water availability and related to laboratory-measured properties.Crossref | GoogleScholarGoogle Scholar |

Rawls WJ, Pachepsky YA, Ritchie JC, Sobecki TM, Bloodworth H (2003) Effect of soil organic carbon on soil water retention. Geoderma 116, 61–76.
Effect of soil organic carbon on soil water retention.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DC%2BD3sXltF2isLc%3D&md5=c6acd591657d5a20f9c555113cb2a5faCAS |

Rayment GE, Higginson FR (1992) ‘Australian laboratory handbook of soil and water chemical methods.’ (Inkata Press: Melbourne)

Robinson N, Rees D, Reynard K, Imhof M, Boyle G, Martin J, Rowan J, Smith C, Sheffield K, Giles S (2006) A land resource assessment of the Wimmera region. Victoria Department of Primary Industries, Bendigo.

Romano N, Hopmans JW, Dane JH (2002) Suction table. In ‘Methods of soil analysis. Part-4: Physical methods’. (Eds JH Dane, GC Topp) pp. 692–698. (Soil Science Society of America: Madison, MI)

Rowan JN, Downes RG (1963) A study of the land in north-western Victoria. TC 2. Soil Conservation Authority, Victoria.

Schaap MG, Bouten W (1996) Modeling water retention curves of sandy soils using neural networks. Water Resources Research 32, 3033–3040.
Modeling water retention curves of sandy soils using neural networks.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK28XmsFOqs7Y%3D&md5=701ee98a023baf54923c0bbec52d3d48CAS |

Schaap MG, Leij FJ, van Genuchten MTh (1998) Neural network analyses for hierarchical prediction of soil hydraulic properties. Soil Science Society of America Journal 62, 847–855.
Neural network analyses for hierarchical prediction of soil hydraulic properties.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK1cXls1Cmurs%3D&md5=c3eefbcac115afeb37576c43e0c25091CAS |

Scheinost AC, Sinowski W, Auerswald K (1997) Regionalization of soil water retention curves in a highly variable soilscape: I. Developing a new pedotransfer function. Geoderma 78, 129–143.
Regionalization of soil water retention curves in a highly variable soilscape: I. Developing a new pedotransfer function.Crossref | GoogleScholarGoogle Scholar |

Shirazi MA, Boersma L (1984) A unifying quantitative analysis of soil texture. Soil Science Society of America Journal 48, 142–147.
A unifying quantitative analysis of soil texture.Crossref | GoogleScholarGoogle Scholar |

Smettem KJR, Gregory PJ (1996) The relation between soil water retention and particle size distribution parameters for some predominantly sandy Western Australian soils. Australian Journal of Soil Research 34, 695–708.
The relation between soil water retention and particle size distribution parameters for some predominantly sandy Western Australian soils.Crossref | GoogleScholarGoogle Scholar |

Srinivasan R, Ramanarayanan TS, Arnold JG, Bednarz ST (1998) Large are hydrologic modelling and assessment part II. Model application. Journal of the American Water Resources Association 34, 91–101.
Large are hydrologic modelling and assessment part II. Model application.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK1cXitleju78%3D&md5=5c2080be06d10250347f18a3a960f9b8CAS |

Stöckle CO, Donatelli M, Nelson R (2003) CropSyst, a cropping systems simulation model. European Journal of Agronomy 18, 289–307.
CropSyst, a cropping systems simulation model.Crossref | GoogleScholarGoogle Scholar |

Tamari S, Wösten JHM, Ruiz-Suarez JC (1996) Testing an artificial neural network for predicting soil hydraulic conductivity. Soil Science Society of America Journal 60, 1732–1741.
Testing an artificial neural network for predicting soil hydraulic conductivity.Crossref | GoogleScholarGoogle Scholar | 1:CAS:528:DyaK2sXjsVensg%3D%3D&md5=9528db226d799295cfb3621a2415ead8CAS |

van Alphen BJ, Booltink HWG, Bouma J (2001) Combining pedotransfer functions with physical measurements to improve the estimation of soil hydraulic properties. Geoderma 103, 133–147.
Combining pedotransfer functions with physical measurements to improve the estimation of soil hydraulic properties.Crossref | GoogleScholarGoogle Scholar |

van Genuchten MTh (1980) A closed form equation for predicting the hydraulic conductivity of unsaturated soils. Soil Science Society of America Journal 44, 892–898.
A closed form equation for predicting the hydraulic conductivity of unsaturated soils.Crossref | GoogleScholarGoogle Scholar |

VRO (2009) Victorian Resources Online website, Department of Primary Industries, Victoria. Available at: www.dpi.vic.gov.au/dpi/vro/vrosite.nsf/pages/landform_geomorphological_framework_5

Warrick AW (1998) Spatial variability. In ‘Environmental soil physics’. (Ed. D Hillel) pp. 655–675. (Academic Press: New York)

Williams J, Ross PJ, Bristow KL (1992) Prediction of the Campbell water retention function from texture, structure and organic matter. In ‘Proceedings International Workshop on Indirect Methods for Estimating the Hydraulic Properties of Unsaturated Soils’. (Eds MTh van Genuchten, FJ Leij, LJ Lund) pp. 427–442. (University of California: Riverside, CA)

Wösten JHM, Finke PA, Jansen MJW (1995) Comparison of class and continuous pedotransfer functions to generate soil hydraulic characteristics. Geoderma 66, 227–237.
Comparison of class and continuous pedotransfer functions to generate soil hydraulic characteristics.Crossref | GoogleScholarGoogle Scholar |