Anomaly Detection in Offshore Open Radio Access Network Using Long Short-Term Memory Models on a Novel Artificial Intelligence-Driven Cloud-Native Data Platform

Abdelrahim Ahmad, Peizheng Li, Robert Piechocki, Rui Inacio
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Abstract

The radio access network (RAN) is a critical component of modern telecom infrastructure, currently undergoing significant transformation towards disaggregated and open architectures. These advancements are pivotal for integrating intelligent, data-driven applications aimed at enhancing network reliability and operational autonomy through the introduction of cognition capabilities, exemplified by the set of enhancements proposed by the emerging Open radio access network (O-RAN) standards. Despite its potential, the nascent nature of O-RAN technology presents challenges, primarily due to the absence of mature operational standards. This complicates the management of data and applications, particularly in integrating with traditional network management and operational support systems. Divergent vendor-specific design approaches further hinder migration and limit solution reusability. Addressing the skills gap in telecom business-oriented engineering is crucial for the effective deployment of O-RAN and the development of robust data-driven applications. To address these challenges, Boldyn Networks, a global Neutral Host provider, has implemented a novel cloud-native data analytics platform. This platform underwent rigorous testing in real-world scenarios of using advanced artificial intelligence (AI) techniques, significantly improving operational efficiency, and enhancing customer experience. Implementation involved adopting development operations (DevOps) practices, leveraging data lakehouse architectures tailored for AI applications, and employing sophisticated data engineering strategies. The platform successfully addresses connectivity challenges inherent in offshore windfarm deployments using long short-term memory (LSTM) Models for anomaly detection of the connectivity, providing detailed insights into its specialized architecture developed for this purpose.
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在新型人工智能驱动的云原生数据平台上使用长短期记忆模型检测海上开放无线电接入网的异常情况
无线接入网(RAN)是现代电信基础设施的重要组成部分,目前正在向分散和开放式架构进行重大转型。这些进步对于集成智能化、数据驱动型应用至关重要,这些应用旨在通过引入认知能力来提高网络可靠性和运营自主性,新兴开放式无线接入网(O-RAN)标准提出的一系列增强措施就是例证。尽管 O-RAN 技术潜力巨大,但由于缺乏成熟的运行标准,它的新生性质也带来了挑战。这使数据和应用的管理变得复杂,尤其是在与传统网络管理和运营支持系统集成方面。不同供应商的具体设计方法进一步阻碍了迁移,限制了解决方案的可重用性。要有效部署 O-RAN 和开发强大的数据驱动型应用,解决电信业务导向工程方面的技能差距至关重要。为了应对这些挑战,全球中立主机提供商 Boldyn Networks 实施了一个新颖的云原生数据分析平台。该平台在使用先进人工智能(AI)技术的真实场景中进行了严格测试,显著提高了运营效率,并增强了客户体验。该平台成功地解决了离岸风电场部署中固有的连接挑战,使用长短期记忆(LSTM)模型对连接进行异常检测,并提供了为此目的开发的专用架构的详细见解。
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