This paper describes a simple yet efficient repetition-based modular system for speeding up air-traffic controllers (ATCos) training. E.g., a human pilot is still required in EUROCONTROL's ESCAPE lite simulator (see https://www.eurocontrol.int/simulator/escape) during ATCo training. However, this need can be substituted by an automatic system that could act as a pilot. In this paper, we aim to develop and integrate a pseudo-pilot agent into the ATCo training pipeline by merging diverse artificial intelligence (AI) powered modules. The system understands the voice communications issued by the ATCo, and, in turn, it generates a spoken prompt that follows the pilot's phraseology to the initial communication. Our system mainly relies on open-source AI tools and air traffic control (ATC) databases, thus, proving its simplicity and ease of replicability. The overall pipeline is composed of the following: (1) a submodule that receives and pre-processes the input stream of raw audio, (2) an automatic speech recognition (ASR) system that transforms audio into a sequence of words; (3) a high-level ATC-related entity parser, which extracts relevant information from the communication, i.e., callsigns and commands, and finally, (4) a speech synthesizer submodule that generates responses based on the high-level ATC entities previously extracted. Overall, we show that this system could pave the way toward developing a real proof-of-concept pseudo-pilot system. Hence, speeding up the training of ATCos while drastically reducing its overall cost.
翻译:本文描述了一个简单而高效的重复式模块系统,用于加速空中交通控制器(ATCos)的培训。例如,在ATCo培训期间,EURCOONTROL的ESAELite模拟器(见https://www.eurocontrol.int/simulator/escape)仍然需要一个人文试点。然而,这一需要可以用一个可以作为试点的自动系统来取代。在本文中,我们的目标是通过整合多种人工智能(AI)电路模块,开发一个假试剂并将其纳入ATCo培训管道。该系统理解由ATCo提供的语音通信,并反过来,该系统生成了一个语音提示,在试点词词学的词组后,我们的系统主要依靠开放源的AI工具和空中交通控制数据库,从而证明其简单易复制性。总体管道由以下组成:(1) 一个接收和处理原始音频输入流的子模块,(2) 一个自动语音识别系统(AASR), 将实时语音识别系统转换成直径指令,同时显示音频和直流的顺序。(3) 最终显示以音频-电路流为基础的语音和电路段。