Deriving Quantitative Monitoring Data Related to Acid Drainage Using Multi- Temporal Hyperspectral Data
نویسندگان
چکیده
Acid drainage (AD) has been recognized as one of the major problems facing the Australian mining industry. Much of Australia has a semi-arid to arid climate and is sparsely populated. The impact of AD is therefore less here than in many other countries. Nevertheless, community and shareholder expectations, and the globalization of Australian mining company activities, have ensured the industry is committed to best practice and due diligence in managing AD.
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