Environmental Forensics: A Multi-catchment Approach to Detect Origin of Sediment Featuring Two Pilot Projects in Malaysia

K. Annammala, A. Nainar, A. R. Yusoff, Z. Yusop, K. Bidin, R. Walsh, W. Blake, Faizuan Abdullah, D. Sugumaran, Khuneswari Gopal Pillay
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引用次数: 5

Abstract

Abstract Although there have been extensive studies on the hydrological and erosional impacts of logging, relatively little is known about the impacts of conversion into agricultural plantation (namely rubber and oil palm). Furthermore, studies on morphological impacts, sediment-bound chemistry and forensic attribution of deposited sediment to their respective sources are scarcer. This chapter introduces the potential for using the multi-proxy sediment fingerprinting technique in this context. Featuring pilot projects in two major flood-prone river systems in Malaysia, the studies explore application of geochemistry-based sediment source ascription. The geochemical signatures of sediment mixtures on floodplains were compared to sediments from upstream source tributaries. The tributaries were hypothesised to have different geochemical signatures in response to dominant land management. The first case study took place in the Segama River system (4,023 km2) of Sabah, Malaysian Borneo where a mixture of primary forest, logged-forests and oil palm plantations were predominant. The second case study was in the Kelantan River Basin (13,100 km2) with two major tributaries (Galas River and Lebir River) where logged-forests and rubber and oil palm plantations are dominant land-uses. Both case studies demonstrated the applicability of this method in ascribing floodplain deposited sediment to their respective upstream sources. Preliminary results showed that trace elements associated with fertilisers (e.g. copper and vanadium) contribute to agricultural catchment signatures. Alkaline and alkaline-earth elements were linked to recently established oil palm plantations due to soil turnover. Mixing model outputs showed that contributions from smaller, more severely disturbed catchment are higher than those from larger but milder disturbed catchments. This method capitalises on flood events to counter its adverse impacts by identifying high-priority sediment source areas for efficient and effective management.
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环境取证:一种多集水区的方法来检测沉积物的起源,在马来西亚有两个试点项目
尽管人们对伐木的水文和侵蚀影响进行了广泛的研究,但对转变为农业种植园(即橡胶和油棕)的影响知之甚少。此外,关于沉积沉积物的形态影响、沉积物结合化学和法医归因的研究较少。本章介绍了在这种情况下使用多代理沉积物指纹技术的潜力。这些研究以马来西亚两个主要易发洪水的河流系统为试点项目,探索了基于地球化学的沉积物来源归属的应用。对比了洪泛平原沉积物混合地球化学特征与上游源支流沉积物混合地球化学特征。假设这些支流具有不同的地球化学特征,以响应主导的土地管理。第一个案例研究发生在马来西亚婆罗洲沙巴州的Segama河系统(4,023平方公里),主要是原始森林、砍伐森林和油棕种植园的混合物。第二个案例研究是在吉兰丹河流域(13 100平方公里),有两条主要支流(加拉斯河和莱比尔河),砍伐森林和橡胶和油棕种植园是主要的土地用途。这两个案例研究都证明了这种方法在将洪泛区沉积沉积物归因于各自上游来源方面的适用性。初步结果表明,与肥料相关的微量元素(如铜和钒)有助于农业流域特征。由于土壤周转,碱性和碱土元素与最近建立的油棕种植园有关。混合模型的输出结果表明,较小的、受干扰较严重的流域的贡献高于较大的、受干扰较轻微的流域。该方法利用洪水事件,通过确定高优先级沉积物源区域,进行高效和有效的管理,来抵消其不利影响。
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