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Shale gas sweet spot prediction based on multi-level fuzzy recognition

A fuzzy identification and shale gas technology, applied in the field of shale gas, can solve problems such as poor comparability of results, no consideration of weight, and inability to judge changes in sweet spot areas or trends, and achieve detailed and accurate predictions

Pending Publication Date: 2020-07-28
中国地质调查局成都地质调查中心
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Problems solved by technology

[0003] The currently existing methods for the evaluation of geological parameters of sweet spots and the selection of sweet spot areas all have problems such as qualitative description, simple subjective assignment and scoring, multi-parameter comprehensive evaluation only through simple superposition, and single evaluation of preservation condition indicators, which are difficult to quantify.
This makes it difficult to quantify the geological characteristic parameters during the prediction process, and the prediction results of the superposition method are not comparable; at the same time, the weight of the impact of each geological characteristic parameter on the gas content is not considered, and the prediction plan obtained by the superposition method cannot judge the study area. A change in sweet spot area or trend within

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  • Shale gas sweet spot prediction based on multi-level fuzzy recognition
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  • Shale gas sweet spot prediction based on multi-level fuzzy recognition

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Embodiment Construction

[0044] In order to make the purpose, technical solutions and advantages of the embodiments of the present invention clearer, the technical solutions in the embodiments of the present invention will be clearly and completely described below. Those who do not indicate the specific conditions in the examples are carried out according to the conventional conditions or the conditions suggested by the manufacturer.

[0045] The shale gas sweetspot prediction method based on multi-level fuzzy identification in the embodiment of the present invention will be described in detail below.

[0046]The invention discloses a shale gas sweet spot prediction method based on multi-level fuzzy identification.

[0047] Since the definition of "dessert" in the prior art is mostly a stereotyped description and cannot be quantified, and different scholars have different definitions of "dessert". In the present invention, "sweet spot" refers to oil and gas-rich layers and areas that can be effective...

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Abstract

The invention provides a shale gas sweet spot prediction method based on multi-level fuzzy recognition, and relates to the field of shale gas. The method comprises: listing a deposition condition, a storage condition and a storage condition as a criterion layer, and respectively listing the parameters of the deposition conditions, the parameters of the reservoir conditions and the parameters of the storage conditions as index layers, comparing the indexes of the same layer in pairs to form a plurality of discrimination matrixes, calculating to obtain the weight of each parameter in each indexlayer relative to the corresponding criterion layer, and determining the shale gas dessert according to the measured value of each parameter and the corresponding weight. The influence of various geological parameters in deposition conditions, reservoir conditions and storage conditions on the gas content of shale is systematically analyzed, the weights of the geological parameters of desserts indifferent tectonic regions are defined in combination with a multi-level fuzzy recognition method, and the distribution of the shale gas dessert regions is predicted through weighted summation in combination with a quantitative plane distribution diagram of the various parameters.

Description

technical field [0001] The invention relates to the field of shale gas, and in particular to a method for predicting shale gas sweet spots based on multi-level fuzzy identification. Background technique [0002] Rich shale gas resources are expected to alleviate the energy crisis we are facing. However, due to the complexity of shale formations, its exploration and development are difficult, and the cost of shale gas drilling is much higher than that of conventional oil drilling. This requires accurate prediction and identification of "sweet spot" potential areas for future exploration when developing shale gas reservoirs. [0003] The currently existing methods for evaluation of sweet spot geological parameters and optimization of sweet spot areas all have problems such as qualitative description, simple subjective assignment and scoring, multi-parameter comprehensive evaluation only through simple superposition, and single preservation condition index evaluation, which is...

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Application Information

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IPC IPC(8): G06F30/27G06N7/02E21B49/00G06F119/14
CPCG06N7/02E21B49/00Y02A10/40
Inventor 余谦赵安坤张娣张茜雷子慧周业鑫
Owner 中国地质调查局成都地质调查中心
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