Australian Natural Resources Atlas

Natural Resource Topics

Soils - ASRIS

What is the Australian Soil Resources Information System (ASRIS)?

Introduction

ASRIS is a national database of soil information, suitable for use at national to large regional scale. It provides for Australia's agricultural zone (see explanation and map below):

1. Digital maps of key soil properties (estimated using models) on a 1.1 square km grid.

2. A national database of existing primary data relating to soil and land resources, comprising :

What is the ASRIS study area?

ASRIS databases cover catchments (river basins) designated by the State agencies as containing significant agricultural activity. Catchment boundaries were those defined by AWRC (http://www.auslig.gov.au/meta/meta5.htm). The entire catchment was included (rather than just the area of agricultural activity) because the modelling process involved use of terrain descriptors that relate to position within the catchment.

Some soil properties were mapped over the entire Australian continent - these were limited to those soil characteristics interpreted from soil maps.

ASRIS study area

Who was involved?

Various agencies and organisations participated in the development of ASRIS including:

How was ASRIS built?

Land resource assessment and soil survey underpin sustainable land management. The Audit initiated the development of the Australian Soil Resources Information System (ASRIS) to compile information on the key soil properties that contribute to productivity, soil resilience and key processes controlling water, air and nutrients.

ASRIS is a national database of information on Australia's soils. It was designed to provide nationally conformable information from the extensive soil point and soil survey map data that has been collected by the State and Territory agencies and CSIRO. It contains both primary data (soil point and soil survey map data) and modelled estimates of soil properties based on these data.

Until the development of ASRIS, the best available digital coverage of soil information for all of Australia was the Atlas of Australian Soils. This was compiled in the late 1960's at a scale of 1:2,000,000 which provides only the broadest national overview of soil attributes. Since then, more detailed soil data have been collected by Commonwealth, State and Territory agencies. . Much of this information has been collected over the last 10 years through national programs such as the National Landcare Program and more recently the Natural Heritage Trust.

ASRIS was developed as a joint project between the Bureau of Rural Sciences, CSIRO Land and Water and the State and Territory agencies responsible for soil and land management. ASRIS built on the collaborative framework established by the Australian Collaborative Land Evaluation Program (ACLEP). The Working Group on Land Resource Assessment with representatives from the Commonwealth and each State and Territory formed the Steering Committee for ASRIS.

ASRIS therefore:

The soil attributes estimated are those most commonly required to characterise, model or predict land resource processes that drive plant productivity, measure resource sustainability or control rate of resource degradation.

ASRIS contains:

The soil resource information can be used for the measurement, modelling, and prediction of land degradation impacts, system sustainability, and productivity.

Modelling of soil properties

Establishing sustainable agricultural and land management systems requires information not just on the distribution of soil types, but on the spatial variation in soil properties - for example, soil texture, water holding capacity and soil fertility. An important objective of ASRIS was to produce nationally consistent spatial estimates of key soil properties, suitable for use in regional to national scale assessments.

The collated ASRIS datasets were used as inputs to models to estimate soil properties, based on:

1. point-based models, used when sufficient soil profile data was available to build reliable models; or
2. polygon-based models, used when soil profile data were limited; or
3. combined point and polygon-based models.

Modelled estimates were produced for

Estimated soil properties are presented as grids (surfaces) with a cell size of 0.01 degrees in longitude and latitude (approximately 1.1 kilometres). Most of the input datasets were at 1:250,000 scale or finer, with the exception of the climate surfaces which were based on 5 kmē grids.

It is important to stress that the national / large regional scale information presented in ASRIS is not suitable for use at the scale of small catchments or individual farms, as it is generalised to provide the best representation over large areas.

The table below sets out the soil properties modelled and the method of estimation for each. Click on the required property to display a digital map (at national scale), a description of the property and its significance, and details of how the map was produced.

Point-based models

New methods were developed by CSIRO to predict each soil attribute individually, on the basis of correlations between soil properties from soil profile data, and other environmental variables. Point-based models are based on the assumption that soil properties vary as a result of environmental variables such as climate and topography as well as soil type.

(Figure) is a schematic representation of the method used for the point models. For each soil property, a matrix was compiled of environmental variables against the soil property being predicted for each point, from which regression and classification models can be built. Since the environmental variables are available over the whole area, it is possible to use these models to extrapolate to areas where no measurements have been made, on the basis of their environmental similarity to points with measurements.

Binary decision trees were built for categorical data (such as texture), using the software modelling package C5.0. Piecewise regression models were built for continuous data (such as pH), using the modelling package Cubist.

The environmental variables used in the modelling included:

These predictor variables operate on different scales - for example MSS was initially available at a 100 metre resolution, the climate surfaces at a 5 kilometre resolution and the digitized ASC on a 1:2.5 million scale. This is not seen as a problem, and may in fact be advantageous given soil?landscape processes are known to operate over a range of scales, and consequently variation in soil properties may be explained by different factors at short and long range scales.

Reliability of point models

Modelled surfaces are presented at a grid resolution of 1.1 km2 (0.01o). Most of the input datasets were at 1:250,000 scale or finer, with the exception of the climate surfaces which were based on 5 kmē grids.

All models were validated by separating the data into a training set and a test set. Model performance was also assessed by cross-validation on the full data set. Common error diagnostics used to assess the reliability of the model are described below.

Each soil property map is accompanied by a matching grid, representing the reliability of the modelled values.

Two major sources of uncertainty associated with point-based models are:

Generally, the more data available, the more robust the model and the less uncertainty in the predictions, because there is less extrapolation into areas / environments which are not well represented in the model construction stage.

For most soil properties, there are areas with very few soil points with measured data to support predictions. This is particularly true of the following regions: Northern Territory, Carpentaria, Far North Queensland, western South Australia and northern Western Australia.

Error diagnostics

Some commonly used error diagnostics presented with each digital map are:

N

the number of points used in the model

R2

an estimate of the percent of the overall variation in the property explained by the model

RMSE

(Root Mean Square Error): This is an estimate of the standard deviation of the errors. A lower RMSE is associated with greater predictive ability. RMSE values can not however be compared between for different properties because they depend critically on the scale used.

Correlation

the strength of the linear association between the observed and the predicted values.

Absolute error

This is the average absolute difference between the observed and predicted values. Lower absolute errors tell us that the predicted values are closer to the observed values more often. Absolute errors do however depend critically on the scale of the units used and so can not generally be compared between models.

Relative error

This is defined as the ratio of the average absolute error magnitude to the the error magnitude that would result from predicting the mean value. If there is little improvement on the mean the environmental variables have little predictive capacity and the relative error is close to 1. Generally the smaller the relative error the more useful the model.

Polygon-based models

Map (polygon) based models are based on the assumption that soil properties can be predicted directly from soil type. Polygon based models were used to model those soil properties (particularly soil water attributes) for which insufficient soil profile data were available to produce reliable models based on the point data.

Maps of soil type are linked to look-up tables of soil properties, following the method described by McKenzie et al (2000). Dominant soil types in each map unit were identified, the interpreted values for the relevant soil type were weighted by an estimate of the area occupied by each soil type, and the weighted value was ascribed to the map unit.

Where only the dominant soil type for a map unit was recorded, the estimate of each soil property for the entire unit was the value for that single soil type. Where a number of soil types and their relative proportions were recorded for each map unit, the soil property for the map unit was estimated as a weighted mean of the values for the soil types occurring in the unit.

detailed description of the polygon-based modelling methods can be found with each digital map.

A schematic representation of the polygon-based modelling process is shown below.

Click here for the larger image

ASRIS polygon datasets used in map-based models are set out in the table below. The scale of the various soil maps used in the polygon modelling is shown in figure below.

Datasets used in polygon-based models

Area

Map data

Soil property data

Western Australia

WA soil landscape mapping (system and subsystem, scale 1:100,000 - 1:250,000)

Tables of soil properties for WA Soil Groups, provided by Agriculture WA

South Australia

SA soil landscape mapping (scale 1:25,000 ? 1:100,000)

Tables of soil properties for SA Soil Groups, provided by PIRSA

Other states and territories

Best available mapping with Northcote Principal Profile Form assigned to map units (scale 1:50,000 ? 1:2 million).Where no other data were available, the Atlas of Australian Soils was used.

Interpretative tables of soil properties for Northcote PPFs, compiled by McKenzie et al (2000)

Reliability of polygon models

Uncertainties associated with polygon-based models are related to:

A brief discussion of reliability is included with the description of each digital map.

Combined point- and polygon-based models

Point- and polygon-based models were combined in two different ways:

1. A digital map derived from a polygon model was included as one of the environmental layers in a point model. For example, the estimates of %clay derived from a polygon-based model were included as one data layer in the point model of %clay. This has the advantage of retaining the spatial structure of the soil map, while allowing estimates of %clay to vary within each map unit as a function of other environmental predictors. In this case, the errors in the final map are dominated by the errors in the point-based modelling process, since the polygon model surface is only one input to the point model.
2. Digital maps derived from different methods can be combined to give estimates of another property. For example, the digital map of soil erodibility was estimated using a pedotransfer function based on ? a measure of soil texture derived from polygon-based models of %clay, %silt and %sand
organic carbon derived from a point-based model permeability classes derived from polygon-based model of saturated hydraulic conductivity.

Here, the errors associated with the polygon model will dominate, since theses are generally larger.

What has been achieved by developing the Australian Soil Resources Information System?

Maintaining our investment - Next steps

Building the Australian Soil Resources Information System was only possible because, in most cases, assessors of land resources have been collecting land (including vegetation) and soil data in the field to standard attributes and definitions. This has resulted in the collection of comparable data and information across Australia.

Data about soils continue to be collected. If we wish to improve our capacity to answer questions about the soils supporting agricultural landscapes, it is essential that new data are also consistent and comparable Australia-wide.

Recognising the need for maintenance of standards, the Australian Collaborative Land Evaluation Program (ACLEP) was established in 1992 to coordinate the development, update and review of technical standards for land resource assessment. The continued development of data standards, tools for analysis and reporting are particularly important for technical data if these data are to be used by non-specialists.

By the mid-1990's ACLEP in conjunction with Western Australia and Queensland developed the Soil Information Transfer and Evaluation System (SITES) in response to a growing demand for land resource information across agencies and Australia. SITES is a data exchange protocol for soil point data. SITES provided a standard for the exchange of data between all State/Commonwealth agencies - without these standards, ASRIS would not have been feasible within the timeframe.

Technical standards need to be extended and maintained as the demand for comparable, quality assured data continues to grow particularly at the regional scale.

95% of the ASRIS project was spent on "cleaning up" data. Inadequate data in mandatory or important data fields, and inconsistent adherence to data standards remain a significant issue for Australian land resource databases.

An essential activity for the national coordinators of ASRIS is to ensure the implementation of technical standards so that the quality of the input data to ASRIS over time is enhanced.

ASRIS analysis and reporting tools will need to be (re)-developed and maintained to improve the use of the ASRIS data outside of the technical practitioners within research and government agencies.

These tools could take the form of user guidelines or, for more advanced applications, computer aided decision support systems that use the underlying ASRIS.

Before committing to ongoing development of the analysis tools it is important that there is a comprehensive understanding of user needs, and that there is commitment to maintain any tools developed.

Continuous improvement in the development and adoption of technical standards in natural resource assessment should be encouraged. However, it is important that the considerable legacy of soil data is not alienated by the adoption of technical standards that do not maximise the use of this historical data.

A case study of data alienation

Soil classifications are designed to communicate an understanding of the attributes important to soil use and/or behaviour. The Atlas of Australian Soils (1968) used a classification called the "Factual Key".

In 1996, the Australian Soil Classification was adopted as the Australian standard. This classification does not yet have interpretive tables that allow data collected using the Factual Key to be matched to the Australian Soil Classification. From mid to late 1990s several resource assessment agencies stopped using the Factual Key in their mapping program.

The implication for the development of ASRIS was that the data collected using the different classifications could not be combined for the assessments undertaken by the Audit.

How can ASRIS be used?

Outputs from ASRIS have already been road tested. ASRIS attributes have been used to prepare comprehensive assessments of water-borne erosion and river nutrient transport, the current and projected extent of soil acidification and landscape productivity.

Sediment and nutrient delivery

In their natural state, Australian soils are generally shallow, infertile and have a fragile structure, which makes them prone to the erosive forces of wind and water, when the soil surface is inadequately protected by vegetation cover.

A major issue in Australian land management is waterborne soil erosion and the consequent impact on land and water resources. Off-site, the effect of soil erosion reduces water quality in streams and water storages due to increases in sediments and associated nutrients and the consequent impacts on ecosystem health.

Knowledge about the sources and rates of erosion under past and present conditions is essential for understanding the consequence of changes in land use and climate on soil erosion.

The Audit assessment of waterborne soil erosion used ASRIS soil erodibility (using several primary input attributes) and total phosphorus data to model sediment and nutrient delivery from hillslopes to streams and ultimately estuaries. See the Waterborne erosion and Riverine nutrient transport information products for more detail.

Acidification

Soil acidification risk is a major agronomic sustainability issue because it insidiously reduces productivity. Clearing land for agricultural purposes accelerates soil acidification. In agricultural ecosystems, actions that break the natural carbon and nitrogen cycles cause acidification. The processes include:

The soil acidification process is primarily controlled by soil type, land use and management. The Audit developed a spatially explicit acidification risk model based on ASRIS attributes including the distribution of acid soils (pH), capacity for soils to buffer against acidifying practices (organic carbon % and percent clay) and plant yield functions (soil pH and other accessory characteristics). See the Soil acidification information product for more detail.

Landscape productivity

To manage Australia natural resource base in a sustainable manner requires knowledge and information about the spatial distribution of stores of nature's raw materials - carbon, water and nutrients - the major processes that control these balances and how these balances change in response to land use.

To model the cycles of carbon, nutrients and water in the landscape information is required that quantitatively and spatially defines terrain, climate, land use and soil stores for water and nutrients. Soil organic carbon and available phosphorus attributes were incorporated into the BIOS model that generated estimate of the soil and litter pools of nutrients and water. See Landscape balances information product for more detail.

Further Information - accessing ASRIS datasets

Australian Collaborative Land Evaluation Project (ACLEP)

The Australian Collaborative Land Evaluation Project encourages sustainable land use and environmental protection by promoting better procedures for acquiring and using land resource information amongst community groups, private industry and government.

ACLEP aims to set national standards for all aspects of land resource assessment, and encourage the development and application of innovative methods.

ACLEP reports to the Working Group on Land Resource Assessment (WGLRA), a steering committee of State and Territory land resource assessment agency representatives. The WGLRA also sets priorities for ACLEP and provides a formal link to the Commonwealth - State committee system via the Sustainable Land and Water Resource Management Committee (SLWRMC).

ASRIS has adopted many ACLEP initiatives and standards. The Working Group on Land Resource Assessment also formed the Steering Committee for ASRIS. Find out more about ACLEP here.

Working Group on Land Resource Assessment

With representatives from Commonwealth, State and Territory land resource assessment agencies, the Working Group on Land Resource Assessment (WGLRA) acted as Steering Committee for the project. The Working Group is a sub-committee of the Sustainable Land and Water Resource Management Committee (SLWRMC), reporting to the Standing Committee on Agriculture and Resource Management (SCARM).

For more information on WGLRA, including membership, click here.

Links and technical documentation

ASRIS modelled surfaces of soil properties are available for direct download from the Australian Natural Resources Data Library.

These are also available for on-line mapping.

Soil profile data compiled in ASRIS remain the property of the original custodian (State and Territory agencies and CSIRO). Soil profile data (in SITES format) are available for direct download from the Australian Natural Resources Data Library, with the written agreement of the data relevant custodian.

View a description of the point modelling method

Soil map data compiled in ASRIS remain the property of the original custodian (State and Territory agencies). Because these maps were compiled for a specific purpose, and because soil and land resources mapping programs are on-going, the compiled maps do not necessarily represent the best available information for a given area. For this reason, it is advisable to consult the relevant agency. Soil map data are available only from the custodian.

View a description of the polygon modelling method

Ancillary datasets compiled in ASRIS for modelling generally remain the property of the original custodians. For details of access conditions, follow the links to the sections on the relevant dataset

topographic descriptors and other digital elevation model (DEM) derivatives
lithology
climate
Landsat MSS imagery
land use

View a description of the ancillary data sets used to build the Australian Soil Resources Information System soil property maps

Proposed Polygon Standards

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