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<idAbs>Agricultural Land Classification system in England and Wales. It classifies agricultural land in five categories according to versatility and suitability for growing crops. The top three grades, Grade 1, 2 and 3a, are referred to as 'Best and Most Versatile' and enjoy significant protection from development. Whereas Grade 4 and 5 are described as poor quality agricultural land and very poor quality agricultural land. A number of consistent criteria used for assessment which include climate (temperature, rainfall, aspect, exposure, frost risk), site (gradient, micro-relief, flood risk) and soil (depth, structure, texture, chemicals, stoniness)</idAbs>
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<idPurp>Agricultural Land Classification system for Don Catchment. The data classifies agricultural land into 5 categories according to versatility and suitability for growing crops</idPurp>
<idCredit>© Crown Copyright and database rights 2018, DEFRA, Natural England</idCredit>
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