与LTE网络相比,5G的愿景在于提供较高的数据速率,低延迟(为了实现近实时应用程序),大大增加了基站容量以及用户的接近完美服务质量(QoS)。为了提供此类服务,5G系统将支持LTE,NR,NR-U和Wi-Fi等访问技术的各种组合。每种无线电访问技术(RAT)都提供不同类型的访问,这些访问应在用户中对其进行最佳分配和管理。除了资源管理外,5G系统还将支持双重连接服务。因此,网络的编排对于系统经理在旧式访问技术方面来说是一个更困难的问题。在本文中,我们提出了一种基于联合元学习(FML)的大鼠分配算法,该算法使RAN Intelligent Controller(RIC)能够更快地适应动态变化的环境。我们设计了一个包含LTE和5G NR服务技术的模拟环境。在模拟中,我们的目标是在传输的截止日期内满足UE需求,以提供更高的QoS值。我们将提出的算法与单个RL试剂,爬行动物算法和基于规则的启发式方法进行了比较。仿真结果表明,提出的FML方法分别在第一部部署回合21%和12%时达到了较高的缓存率。此外,在比较方法中,提出的方法最快地适应了新任务和环境。
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引入了一种新的多模式传感器融合方法。该技术依赖于两个阶段的过程。在第一阶段,由未标记的训练数据构建了多模式生成模型。在第二阶段,生成模型是先验的重建和传感器融合任务的搜索歧管。该方法还处理仅通过亚采样即可(即压缩传感)访问观测值的情况。我们在一系列多模式融合实验(例如多感官分类,降解和从子采样观测值中恢复)上展示了有效性和出色的性能。
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衡量移动数据的客户体验对于全球移动运营商来说至关重要。收到的参考信号(RSRP)是当前移动网络管理,评估和监视的重要指标之一。通过最小化驱动器测试(MDT)(一种3GPP标准技术)收集的无线电数据通常用于无线网络分析。在不同地理区域收集MDT数据效率低下,受地形条件和用户的存在限制,因此对于动态无线电环境来说不是足够的技术。在本文中,我们研究了RSRP预测,利用MDT数据和数字双胞胎(DT)的生成模型,并提出了数据驱动的两层神经网络(NN)模型。在第一层中,与用户设备(UE)相关的环境信息,基站(BS)和网络关键性能指标(KPI)是通过变量自动编码器(VAE)提取的。第二层被设计为可能性模型。在这里,采用了环境功能和实际MDT数据功能,制定了集成的培训过程。在验证中,我们提出的使用现实世界数据的模型表明,与经验模型相比,与完全连接的预测网络相比,与经验模型相比,精度提高了约20%或更多。
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下一代网络将积极采用人工智能(AI)和机器学习(ML)技术,用于自动化网络和最佳网络操作策略。以Open Ran(O-Ran)为代表的新兴网络结构符合这一趋势,其规范中心的无线电智能控制器(RIC)用作ML应用程序主机。各种ML模型,尤其是强化学习(RL)模型,被认为是解决与RAN相关的多目标优化问题的关键。但是,应该认识到,当前大多数RL成功都局限于抽象和简化的仿真环境,这可能不会直接转化为复杂的真实环境中的高性能。主要原因之一是模拟与真实环境之间的建模差距,这可能会使RL代理通过模拟训练不适合真实环境。此问题称为SIM2REAL差距。本文在O-Ran的背景下引起了SIM2REAL挑战。具体而言,它强调了数字双胞胎(DT)可以作为模型开发和验证的地方的特征和好处。提出了几种用例,以举例说明并证明在真实环境中训练有训练的RL模型的故障模式。讨论了DT在协助RL算法开发方面的有效性。然后提出了通常用于克服SIM2REAL挑战的基于学习的基于艺术学习的方法。最后,从数据交互,环境瓶颈和算法设计等潜在问题的角度讨论了O-RAN中RL应用程序实现的开发和部署问题。
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无线电接入网络(RAN)技术继续见证巨大的增长,开放式运行越来越最近的势头。在O-RAN规范中,RAN智能控制器(RIC)用作自动化主机。本文介绍了对O-RAN堆栈相关的机器学习(ML)的原则,特别是加强学习(RL)。此外,我们审查无线网络的最先进的研究,并将其投入到RAN框架和O-RAN架构的层次结构上。我们在整个开发生命周期中提供ML / RL模型面临的挑战的分类:从系统规范到生产部署(数据采集,模型设计,测试和管理等)。为了解决挑战,我们将一组现有的MLOPS原理整合,当考虑RL代理时,具有独特的特性。本文讨论了系统的生命周期模型开发,测试和验证管道,称为:RLOPS。我们讨论了RLOP的所有基本部分,包括:模型规范,开发和蒸馏,生产环境服务,运营监控,安全/安全和数据工程平台。根据这些原则,我们提出了最佳实践,以实现自动化和可重复的模型开发过程。
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We present a dynamic path planning algorithm to navigate an amphibious rotor craft through a concave time-invariant obstacle field while attempting to minimize energy usage. We create a nonlinear quaternion state model that represents the rotor craft dynamics above and below the water. The 6 degree of freedom dynamics used within a layered architecture to generate motion paths for the vehicle to follow and the required control inputs. The rotor craft has a 3 dimensional map of its surroundings that is updated via limited range onboard sensor readings within the current medium (air or water). Path planning is done via PRM and D* Lite.
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Nine language-vision AI models trained on web scrapes with the Contrastive Language-Image Pretraining (CLIP) objective are evaluated for evidence of a bias studied by psychologists: the sexual objectification of girls and women, which occurs when a person's human characteristics are disregarded and the person is treated as a body or a collection of body parts. A first experiment uses standardized images of women from the Sexual OBjectification and EMotion Database, and finds that, commensurate with prior research in psychology, human characteristics are disassociated from images of objectified women: the model's recognition of emotional state is mediated by whether the subject is fully or partially clothed. Embedding association tests (EATs) return significant effect sizes for both anger (d >.8) and sadness (d >.5). A second experiment measures the effect in a representative application: an automatic image captioner (Antarctic Captions) includes words denoting emotion less than 50% as often for images of partially clothed women than for images of fully clothed women. A third experiment finds that images of female professionals (scientists, doctors, executives) are likely to be associated with sexual descriptions relative to images of male professionals. A fourth experiment shows that a prompt of "a [age] year old girl" generates sexualized images (as determined by an NSFW classifier) up to 73% of the time for VQGAN-CLIP (age 17), and up to 40% of the time for Stable Diffusion (ages 14 and 18); the corresponding rate for boys never surpasses 9%. The evidence indicates that language-vision AI models trained on automatically collected web scrapes learn biases of sexual objectification, which propagate to downstream applications.
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Algorithms that involve both forecasting and optimization are at the core of solutions to many difficult real-world problems, such as in supply chains (inventory optimization), traffic, and in the transition towards carbon-free energy generation in battery/load/production scheduling in sustainable energy systems. Typically, in these scenarios we want to solve an optimization problem that depends on unknown future values, which therefore need to be forecast. As both forecasting and optimization are difficult problems in their own right, relatively few research has been done in this area. This paper presents the findings of the ``IEEE-CIS Technical Challenge on Predict+Optimize for Renewable Energy Scheduling," held in 2021. We present a comparison and evaluation of the seven highest-ranked solutions in the competition, to provide researchers with a benchmark problem and to establish the state of the art for this benchmark, with the aim to foster and facilitate research in this area. The competition used data from the Monash Microgrid, as well as weather data and energy market data. It then focused on two main challenges: forecasting renewable energy production and demand, and obtaining an optimal schedule for the activities (lectures) and on-site batteries that lead to the lowest cost of energy. The most accurate forecasts were obtained by gradient-boosted tree and random forest models, and optimization was mostly performed using mixed integer linear and quadratic programming. The winning method predicted different scenarios and optimized over all scenarios jointly using a sample average approximation method.
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We apply the vision transformer, a deep machine learning model build around the attention mechanism, on mel-spectrogram representations of raw audio recordings. When adding mel-based data augmentation techniques and sample-weighting, we achieve comparable performance on both (PRS and CCS challenge) tasks of ComParE21, outperforming most single model baselines. We further introduce overlapping vertical patching and evaluate the influence of parameter configurations. Index Terms: audio classification, attention, mel-spectrogram, unbalanced data-sets, computational paralinguistics
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Common to all different kinds of recurrent neural networks (RNNs) is the intention to model relations between data points through time. When there is no immediate relationship between subsequent data points (like when the data points are generated at random, e.g.), we show that RNNs are still able to remember a few data points back into the sequence by memorizing them by heart using standard backpropagation. However, we also show that for classical RNNs, LSTM and GRU networks the distance of data points between recurrent calls that can be reproduced this way is highly limited (compared to even a loose connection between data points) and subject to various constraints imposed by the type and size of the RNN in question. This implies the existence of a hard limit (way below the information-theoretic one) for the distance between related data points within which RNNs are still able to recognize said relation.
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