College of Politics and Law, Changchun Normal University, Changchun, China.
Comput Intell Neurosci. 2022 May 28;2022:6726475. doi: 10.1155/2022/6726475. eCollection 2022.
In this paper, we analyze the changes in family structure and explore the changes in detail, based on which we construct a neural network model of smart aging. Based on the gender perspective, the individual growth model in the multilayer linear model is used to examine the effects of family structure changes on the elderly in terms of economic exchange, daily care, and emotional support. The results show that there is no significant gender difference in the family structure changes on the elderly in terms of economic exchange and daily care, but there is a significant gender difference in terms of emotional support. To solve the problem of data imbalance in the daily activity categories of the elderly, this paper resamples the data and uses different neural network models for activity recognition of the sensor data generated from the daily activities of the elderly. In this paper, the daily behavior patterns of the elderly over a while are studied by correlating three conditions of time distance, optimal path, and sensor distance to discover the daily behavior patterns of the elderly, while the abnormal behavior patterns can be well separated by EM clustering algorithm. The daily behavior of the elderly is a coarse-grained representation of their daily activities. It is not limited to a specific activity and does not require the sensor ID, trigger time, and location triggered by the activity to be consistent, but in long-term daily activity data, it abstracts the general behavior rules of the elderly activities. Through the research of this paper, the existing system is improved, and the multifaceted needs of the elderly are fully considered, from housing needs to spiritual needs, to face the current elderly care problems with a positive attitude, create a good social elderly care environment for the elderly, and realize the real elderly care.
本文分析了家庭结构的变化,并详细探讨了这些变化,在此基础上构建了智能老龄化的神经网络模型。基于性别视角,使用多层线性模型中的个体增长模型,从经济交换、日常照顾和情感支持三个方面考察家庭结构变化对老年人的影响。结果表明,家庭结构变化对老年人在经济交换和日常照顾方面没有显著的性别差异,但在情感支持方面存在显著的性别差异。为了解决老年人日常活动类别的数据不平衡问题,本文对数据进行了重采样,并使用不同的神经网络模型对老年人日常活动产生的传感器数据进行活动识别。本文通过关联时间距离、最优路径和传感器距离三种条件,研究了老年人一段时间内的日常行为模式,发现老年人的日常行为模式,同时可以通过 EM 聚类算法很好地分离异常行为模式。老年人的日常行为是对其日常活动的粗粒度表示,不限于特定活动,并且不需要活动触发的传感器 ID、触发时间和位置一致,但在长期的日常活动数据中,它抽象出了老年人活动的一般行为规则。通过本文的研究,改进了现有系统,充分考虑了老年人的多方面需求,从住房需求到精神需求,积极面对当前的老年人护理问题,为老年人创造良好的社会老年人护理环境,实现真正的老年人护理。