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Sampling Strategies for Mapping ‘Within-field’ Variability in the Dry Matter Yield and Mineral Nutrient Status of Forage Grass Crops in Cool Temperate Climes

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Abstract

In the absence of suitable technology to measure and map the dry matter (DM) yield distributions of forage grass crops within individual fields, a ‘manual’ procedure of yield mapping has been developed. Samples of herbage are collected just prior to each silage harvest from known grid points within a field, and sward DM yields at each point are predicted from the mineral composition of the herbage, using empirical mathematical models. Yield maps (and maps of sward nutrient status) are then produced by kriging interpolation between the point data. To make the most efficient use of time and resources, however, sampling intensity needs to be kept to the absolute minimum necessary for interpolation purposes. The aim of the present study was to examine the spatial variability in sward DM yield and mineral nutrient status in a large grass silage field under a three-cut system, and devise ‘optimal’ sampling strategies for mapping the distributions of these parameters at each cut. Herbage samples were collected from the field, prior to each harvest, at 25 m intervals in a regular rectangular grid to provide databases of herbage nutrient contents and DM yields. Different data combinations were abstracted from these databases for comparison purposes, and ordinary kriging used to produce interpolated maps of DM yield and sward N, P, K and S statuses. The results suggested that a sampling density of just seven samples per hectare was adequate for estimating the ‘true’ population means of sward DM yield and sward N, P, K, and S statuses. For mapping purposes, it was found that the best compromise between interpolation accuracy and sampling efficiency was to collect herbage samples in a 35.4 m×35.4 m equilateral triangular sampling pattern.

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References

  • Agterberg, F. P. 1984. Trend surface analysis, In: Spatial Statistics and Models, edited by G. L. Gaile and C. J. Willmott (Reidel, Dordrecht, the Netherlands), p. 147-171.

    Google Scholar 

  • Anslow, R. C. and Green, J. O. 1967. The seasonal growth of pasture grasses. Journal of Agricultural Science (Cambridge) 68, 109-122.

    Google Scholar 

  • Bailey, J. S., Beattie, J. A. M. and Kilpatrick D. J. 1997a. The diagnosis and recommendation integrated system (DRIS) for diagnosing the nutrient status of grassland: I model establishment. Plant and Soil 197, 127-135.

    Google Scholar 

  • Bailey, J. S., Cushnahan, A. and Beattie, J. A. M. 1997b. The diagnosis and recommendation integrated system (DRIS) for diagnosing the nutrient status of grassland: II model calibration and validation. Plant and Soil 197, 137-147.

    Google Scholar 

  • Bailey, J. S., Higgins, A. H. and Jordan, C. 2000. Empirical models for predicting the dry matter yield of grass silage swards using plant tissue analyses. Precision Agriculture 2, 131-145.

    Google Scholar 

  • Cruickshank, J. G. 1997. Soil and the Environment: Northern Ireland (The Queen's University of Belfast, Belfast, UK), p. 213.

    Google Scholar 

  • Environmental Systems Research Institute Inc. 1999. ArcView GIS, V3.2 (Redlands, California, USA).

  • Gamma Design Software, 1999. GS + —Geostatistics for the Environmental Sciences, V3.1 for Windows (Plainwell, Michigan, USA).

  • Gotway, C. A., Ferguson, R. B., Hergert, G. W. and Peterson, T. A. 1996. Comparison of kriging and inverse-distance methods for mapping soil parameters. Soil Science Society of America Journal 60, 1237-1247.

    Google Scholar 

  • Gupta, R. K., Mostaghimi, S., McClellan P. W., Alley, M. M. and Brann, D. E. 1997. Spatial variability and sampling strategies for NO3-N, P, and K determinations for site-specific farming. Transactions of the American Society of Agricultural Engineers 40, 337-343.

    Google Scholar 

  • Hald, A. 1960. Statistical Theory with Engineering Applications (John Wiley & Sons, New York).

    Google Scholar 

  • Keady, T. W. J. and O'Kiely, P. 1995. The effects of nitrogen fertilization of grassland on silage fermentation, in-silo losses and effluent production. Irish Journal of Agricultural and Food Research 34, 80-81.

    Google Scholar 

  • Ministry of Agriculture, Fisheries and Food, 1986. The Analysis of Agricultural Materials, MAFF/ADAS Reference Book 427 (HMSO, London).

    Google Scholar 

  • McBratney, A. B. and Webster, R. 1986. Choosing functions for semi-variograms and fitting them to sampling estimates. Journal of Soil Science 37, 617-639.

    Google Scholar 

  • Oliver, M. A. and Frogbrook, Z. L. 1998. Sampling to estimate soil nutrients for precision agriculture. Proceedings of the International Fertilizer Society, No 417, p. 36.

  • Oliver, M. A. and Webster, R. 1991. How geostatistics can help you. Soil Use and Management 7, 206-217.

    Google Scholar 

  • Sachs, L. 1982. Applied Statistics (Springer-Verlag, New York).

    Google Scholar 

  • Shi, Z., Wang, K., Bailey, J. S., Jordan C. and Higgins, A. H. 2000. Sampling strategies for mapping soil phosphorus and soil potassium distributions in cool temperate grassland. Precision Agriculture 2, 347-357.

    Google Scholar 

  • SPSS Inc. 1997. SPSS for Windows, V8.0.0, (Chicago, Illinois, USA).

  • Snedecor, G. W. and Cochran, W. G. 1967. Statistical Methods, sixth Edition (Iowa State University Press, Ames, Iowa).

    Google Scholar 

  • Tukey, J. W. 1977. Exploratory Data Analysis (Addison Wesley, Reading, Massachusetts).

    Google Scholar 

  • Yfantis, E. A., Flatman, G. T. and Behar, J. V. 1987. Efficiency of kriging estimation for square, triangular, and hexagonal grids. Mathematical Geology 19, 183-205.

    Google Scholar 

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Jordan, C., Shi, Z., Bailey, J.S. et al. Sampling Strategies for Mapping ‘Within-field’ Variability in the Dry Matter Yield and Mineral Nutrient Status of Forage Grass Crops in Cool Temperate Climes. Precision Agriculture 4, 69–86 (2003). https://doi.org/10.1023/A:1021815122216

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