摘要:
本文讨论了成矿随机性问题,强调成矿理论应建立在概率论思想的基础上。元素丰度的概率类型,取决于所处环境赋于它的地球化学性质:环境使其具滞呆性时,呈正态;具活泼性时为偏倚型。活泼性元素成矿后其概率分布为正偏倚型,可被分解为若干个正态,具高均值者伴有大的标准差。滞呆性元素成矿后概率分布为负偏倚型,所分解得的正态与活泼性元素的相反,具高均值者带有小的标准差。矿床的空间分布,受多阶段成矿和成矿因素的叠加控制,故不服从泊松律,而为负二项分布。
Abstract:
This paper deals with mineralization randomness, it is emphasized that mineralization model, the key to find hidden orebodies, should be established on the basis of probability theory. The paper shows clearly that probability distribution types of elements depend on neither their content nor their occurring form, but may be controlled by the elements' geochemical behavior which, in turn, is determined by the environment. For example, during sedimentary processes, titanium is a geochemically inactive element and no matter how low its content in sedimentary rocks is, it obeys normal distribution yet; however in the basic magmatic system titanium shows geochemically activity, and no matter how abundant its concentration in trap is, it does not obey normal distribution and results in asymmetrical distribution of positive biasness with a quite long tail. Owing to later geological events, geochemically active elements in source beds could be mobilized and transported in the oreforming solution, which, in the form of the random walk, migrates into reservoir beds and some orebodys are formed. This mineralization processes are inhomogeneity in space and have many stages in time. The sampled population of ore-forming elements then consist of a mixture of a lot of indivdual populations. For example, the content of copper occurred in copper deposits in Centeral Yunnan in China is of asymmetrical distribution with positive biasness. This distribution can be broken into three kinds of normal, which are characterized by large average value with large standard deviation. In contrast to active elements, the cumulation of geochemically inactive elements, such as iron, may result from rock-forming elements being intermittently eliminated from ore-forming system. Therefore, in sedimentary-reworking iron deposit, such as in the Shilu iron deposit, the histogram of total iron values shows an asymmeteric distribution with negative biasness, which can also be divided into three kinds of normal, but its subdistribution is characterized by large average value with small standard deviation. Owing to overlaping Poisson distributions with different means, the spatial distribution of copper deposits obeys negative binomial distribution. Frequency distribution of structural line density could well fitted negative binomial model.