Okoh Daniel, Onuorah Loretta, Rabiu Babatunde, Obafaye Aderonke, Audu Dauda, Yusuf Najib, Owolabi Oluwafisayo
Centre for Atmospheric Research, National Space Research and Development Agency, Anyigba, Nigeria.
Institute for Space Science and Engineering, African University of Science and Technology, Abuja, Nigeria.
Geosci Front. 2022 Mar;13(2):101318. doi: 10.1016/j.gsf.2021.101318. Epub 2021 Oct 20.
We present interesting application of artificial intelligence for investigating effect of the COVID-19 lockdown on 3-dimensional temperature variation across Nigeria (2°-15° E, 4°-14° N), in equatorial Africa. Artificial neural networks were trained to learn time-series temperature variation patterns using radio occultation measurements of atmospheric temperature from the Constellation Observing System for Meteorology, Ionosphere, and Climate (COSMIC). Data used for training, validation and testing of the neural networks covered period prior to the lockdown. There was also an investigation into the viability of solar activity indicator (represented by the sunspot number) as an input for the process. The results indicated that including the sunspot number as an input for the training did not improve the network prediction accuracy. The trained network was then used to predict values for the lockdown period. Since the network was trained using pre-lockdown dataset, predictions from the network are regarded as expected temperatures, should there have been no lockdown. By comparing with the actual COSMIC measurements during the lockdown period, effects of the lockdown on atmospheric temperatures were deduced. In overall, the mean altitudinal temperatures rose by about 1.1 °C above expected values during the lockdown. An altitudinal breakdown, at 1 km resolution, reveals that the values were typically below 0.5 °C at most of the altitudes, but exceeded 1 °C at 28 and 29 km altitudes. The temperatures were also observed to drop below expected values at altitudes of 0-2 km, and 17-20 km.
我们展示了人工智能在研究新冠疫情封锁对赤道非洲尼日利亚(东经2° - 15°,北纬4° - 14°)三维温度变化影响方面的有趣应用。利用气象、电离层和气候星座观测系统(COSMIC)的大气温度无线电掩星测量数据,训练人工神经网络来学习时间序列温度变化模式。用于神经网络训练、验证和测试的数据涵盖了封锁前的时期。同时还研究了太阳活动指标(以太阳黑子数表示)作为该过程输入的可行性。结果表明,将太阳黑子数作为训练输入并不能提高网络预测精度。然后,使用训练好的网络预测封锁期间的值。由于该网络是使用封锁前的数据集进行训练的,所以网络的预测值被视为在没有封锁情况下的预期温度。通过与封锁期间的实际COSMIC测量值进行比较,推断出封锁对大气温度的影响。总体而言,封锁期间平均海拔温度比预期值升高了约1.1°C。以1公里分辨率进行的海拔细分显示,在大多数海拔高度,温度值通常低于0.5°C,但在28公里和29公里海拔处超过了1°C。在0 - 2公里和17 - 20公里海拔处,温度也被观测到低于预期值。