期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
一道高考生物学遗传题的“说题”与分析
1
作者 龚芬芳 涂艺声 《中学生物教学》 2019年第16期61-63,共3页
“说题”是近几年来兴起的一种教研活动方式及教学方式。以2017年全国Ⅰ卷理综生物学第32题为例进行说题。通过说命题立意、说知识考点、说思路、说步骤分析,借助图表梳理隐蔽复杂的知识交联信息,达到事半功倍的教学效果。
关键词 生物学遗传题 基因型 伴性遗传 从性遗传
下载PDF
2017年高考全国卷理综生物学第32题的解析
2
作者 陈从兵 《生物学教学》 北大核心 2017年第11期48-50,共3页
本文对2017年三份全国卷理综卷的第32题,生物学遗传类非选择题进行解析。
关键词 2017全国卷高考 生物学遗传题 解析
下载PDF
Dolphin swarm algorithm 被引量:9
3
作者 Tian-qi WU Min YAO Jian-hua YANG 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2016年第8期717-729,共13页
By adopting the distributed problem-solving strategy, swarm intelligence algorithms have been successfully applied to many optimization problems that are difficult to deal with using traditional methods. At present, t... By adopting the distributed problem-solving strategy, swarm intelligence algorithms have been successfully applied to many optimization problems that are difficult to deal with using traditional methods. At present, there are many well-implemented algorithms, such as particle swarm optimization, genetic algorithm, artificial bee colony algorithm, and ant colony optimization. These algorithms have already shown favorable performances. However, with the objects becoming increasingly complex, it is becoming gradually more difficult for these algorithms to meet human's demand in terms of accuracy and time. Designing a new algorithm to seek better solutions for optimization problems is becoming increasingly essential. Dolphins have many noteworthy biological characteristics and living habits such as echolocation, information exchanges, cooperation, and division of labor. Combining these biological characteristics and living habits with swarm intelligence and bringing them into optimization problems, we propose a brand new algorithm named the ‘dolphin swarm algorithm' in this paper. We also provide the definitions of the algorithm and specific descriptions of the four pivotal phases in the algorithm, which are the search phase, call phase, reception phase, and predation phase. Ten benchmark functions with different properties are tested using the dolphin swarm algorithm, particle swarm optimization, genetic algorithm, and artificial bee colony algorithm. The convergence rates and benchmark function results of these four algorithms are compared to testify the effect of the dolphin swarm algorithm. The results show that in most cases, the dolphin swarm algorithm performs better. The dolphin swarm algorithm possesses some great features, such as first-slow-then-fast convergence, periodic convergence, local-optimum-free, and no specific demand on benchmark functions. Moreover, the dolphin swarm algorithm is particularly appropriate to optimization problems, with more calls of fitness functions and fewer individuals. 展开更多
关键词 Swarm intelligence Bio-inspired algorithm DOLPHIN OPTIMIZATION
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部