Towards 1 Million Barrels Oil Per Day in 2030: Visual Analytics for Artificial Lift Performance Optimization in Indonesia

Achmad Rocky Falach, Ageng Warasta, Alfandra Ihsan, Amalia Kusuma Dewi, Heri Safrizal, Randy Perfibita, Satria Panji Kauripan
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Abstract

One of the strategies to achieve Indonesia's main goal to produce one million barrels oil per day in 2030 is to maintain existing production volume. The key of maintain the existing production is to optimize artificial lift performance used in oil wells, because 96% of oil wells in Indonesia had installed artificial lifts and their performance will significantly affect the production decline rate. This approach aims to create a simple data visualization from macro perspective, to evaluate the artificial lift performance of all oil wells in Indonesia and to find a solution to optimize their performance. This method is started by collecting the main parameters that describes the artificial lift performance such as artificial lift type, historical run life, historical operating cost, production rate, reservoir depth, type of fluid as well as additional issues from each field in Indonesia. After the data is gathered, the next step is to cluster the usage of various artificial lifts in Indonesia, which have similarities such as area, crude type, depth, rate, and operational problems, in terms of comparison between the optimum case and non-optimum one. Finally, from the non-optimum one, it will be evaluated on more detailed programs for further optimization. This evaluation process is carried out by visualizing all the data gathered using some informative dashboards. The digitalization is expected to help the improvement of evaluation time and to support decision processes. By implementing this method, several success cases were demonstrated in 2020, like optimizing Sucker Rod Pump (SRP) component in one of the fields in Sumatra, with the gain around 120 BOPD, Gas lift and SRP to Electric Submersible Pump (ESP) conversion in one of the fields in Kalimantan with 160 BOPD production outcome, switching normal ESP rate to lower rate ESP which resulted from double run life compared with the previous one, and also conversion from SRP to HPU that can extend its run life, while creating cost efficiency. From those results, it shows the benefit of the dashboards created for artificial lift optimization, especially from Government point of view. Furthermore, there are around 50 wells that will be evaluated in detail for optimization program. The visual analytics of the dashboards, for example, will help the evaluation process all at once providing positive impacts on artificial lift optimalization program. In the future, we hope that these dashboards could be developed further, by combining the implementation of machine learning, like fuzzy logic methods or neural network, to enhance the operator performance and to improve production efficiency toward the achievement of one million barrels oil per day in 2030.
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2030年日产量达到100万桶:印尼人工举升性能优化的可视化分析
要实现印尼在2030年每天生产100万桶石油的主要目标,其中一个战略是保持现有的产量。保持现有产量的关键是优化油井使用的人工举升性能,因为印尼96%的油井安装了人工举升,其性能对产量递减率有很大影响。该方法旨在从宏观角度创建简单的数据可视化,以评估印度尼西亚所有油井的人工举升性能,并找到优化其性能的解决方案。该方法首先收集描述人工举升性能的主要参数,如人工举升类型、历史运行寿命、历史操作成本、产量、油藏深度、流体类型以及印度尼西亚每个油田的其他问题。数据收集完成后,下一步是对印度尼西亚各种人工举升的使用情况进行聚类,比较最优情况和非最优情况,这些人工举升在面积、原油类型、深度、速率、操作问题等方面具有相似性。最后,从非最优方案出发,对更详细的方案进行评价,进一步优化。这个评估过程是通过使用一些信息仪表板将收集到的所有数据可视化来执行的。数字化有望帮助改进评估时间并支持决策过程。通过实现此方法,几个成功案例展示了2020年,像优化抽油杆泵(SRP)组件在苏门答腊岛的一个领域,获得约120 BOPD,气举和SRP电动潜油泵(ESP)转换的一个领域在加里曼丹160 BOPD生产结果,开关正常ESP率降低率ESP造成双重运行生命与前一个相比,同时转换从SRP HPU可以延长运行寿命,同时创造成本效益。从这些结果来看,它显示了为人工举升优化而创建的仪表板的好处,特别是从政府的角度来看。此外,还将对约50口井进行详细的优化方案评估。例如,仪表板的可视化分析将有助于评估过程,同时对人工举升优化程序产生积极影响。未来,我们希望这些仪表板可以进一步发展,通过结合模糊逻辑方法或神经网络等机器学习的实施,提高操作人员的性能,提高生产效率,朝着2030年实现每天100万桶石油的目标迈进。
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