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Flight Altitude Optimization Using Genetic Algorithms Considering Climb and Descent Costs in Cruise with Flight Plan Information

机译:使用遗传算法考虑攀登和下降成本的飞行高度优化在巡航中与飞行计划信息进行巡航

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Flight trajectory optimization algorithms reduce flight cost and fuel consumption, thereby reducing the polluting emissions released to the atmosphere. Ground teams and avionics equipment such as the Flight Management System evaluate different routes to minimize flight costs. The optimal trajectory represents the flight plan given to the crew. The resulting flight plan contains waypoints and weather information such as the wind speed and direction and the temperature for each waypoint. The flight plan is normally introduced manually into the Flight Management System. In this paper, genetic algorithms were applied to the waypoints available in a flight plan to find the altitudes that minimize total fuel consumption, taking into account the cruise-climb and cruise-descent steps' costs. The genetic algorithms emulate the evolution process through a predefined number of generations. Here, an individual is defined as a set of altitudes, whose fitness depends on its ability to improve the flight cost. The most-fitted individuals are selected to reproduce and create a new generation of individuals. As new generations are created, the fitness of the individuals improves and an optimal set of altitudes to reduce the flight cost is found. Aircraft fuel consumption in this algorithm was computed using a Performance Database, which was developed and validated by our industrial partner using experimental flight data. This approach differs from the Equations of Motion commonly used in the field and in the literature. Preliminary results showed that the set of altitudes provided by the genetic algorithm reduces the flight cost. This fuel reduction has a direct impact on the level of polluting emissions.
机译:飞行轨迹优化算法减少了飞行成本和燃料消耗,从而减少了释放到大气的污染排放。飞行管理系统等地面团队和航空电子设备(如飞行管理系统)评估不同的路线,以尽量减少飞行成本。最佳轨迹代表了船员的飞行计划。由此产生的飞行计划包含路点和天气信息,例如风速和方向和每个航点的温度。飞行计划通常是手动引入飞行管理系统。在本文中,将遗传算法应用于飞行计划中可用的航点,以找到最小化总燃料消耗的高度,考虑到巡航攀登和巡航缩减步骤的成本。遗传算法通过预定数量的几代人来模拟演化过程。这里,个人被定义为一组高度,其适合度取决于其提高飞行成本的能力。选择最拟合的个人以繁殖并创造新一代的个人。由于创建了新一代,发现个人的适应性提高,并找到了最佳的高度来减少飞行成本。使用性能数据库计算该算法中的飞机燃料消耗,该算法由我们的工业伙伴使用实验飞行数据开发和验证。这种方法与野外和文献中通常使用的运动方程不同。初步结果表明,遗传算法提供的一组海拔高度降低了飞行成本。这种燃油减少对污染排放水平的直接影响。

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