The Sun (Malaysia)

Swarm Intelligen­ce

> By observing flocks, herds and colonies, we learn different kinds of dynamic group behaviours

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W Ecan learn much about decisionma­king from nature. The honey bee swarm is considered to be one of the best examples of collective decision-making outside the human domain.

In nature, strong honey bee colonies reproduce by dividing themselves. The mother queen and about two-thirds of her workers leave the nest, fly to a nearby support such as a branch or hedge, and form a swarm cluster. Scouts then fly from the cluster to search the surroundin­gs for potential new nest sites. Scout bees must evaluate various potential nest sites and decide on a final site before the colony runs out of food.

For the bees, an effective decision-making strategy is needed to cope with all the informatio­nal variations such as numbers, quality and location of alternativ­e nest sites, and the order of site discoverie­s. The initial informatio­n gathering phase gradually gives way to the decision-making phase, and it is done in a virtuous cycle of decision-making by the scout bees when better sites are discovered and poorer sites abandoned.

The scouts supporting the better quality sites fly more trips and garner more scout bees to join them. The total scout numbers present at each site is a good measure of the total evidence in favour of a particular site as the swarm’s new home. This is carried out until a critical quorum threshold is reached at one of the sites which becomes the preferred nest site.

The scout bees are interactin­g locally with one another and with the environmen­t. They follow very simple rules without any centralise­d control structure dictating how they should behave. Yet, such interactio­ns lead to emergent “swarm intelligen­t” behaviour unknown to the individual bees.

Swarm Intelligen­ce (SI) was first introduced in 1989 by Gerardo Beni and Jing Wang to define the collective behaviour of decentrali­sed, natural or artificial self-organised systems. Besides bee colonies, other examples of SI in natural systems include ant colonies, bird flocking, animal herding, microbial growth, and fish schooling.

By observing the flocks, herds and colonies of animals, we learn different kinds of dynamic group behaviours where a large number of individual­s without supervisio­n can accomplish difficult tasks by following simple rules when they interact with each other. They distribute problem solving among many individual­s, allocate resources efficientl­y and also adapt rapidly to changes in the environmen­t. Instinctiv­ely, they self-organise in a clever manner.

This has inspired scientists to capture their behaviour in algorithms, which have useful applicatio­ns for organisati­ons to optimise their complex business operations, to tap into wisdom of crowds, and to pool informatio­n in order to improve on one another’s insights.

Two lessons may be drawn from the smart swarms as suggested by Peter Miller, author of Smart Swarm (using animal behaviour to change our world). Firstly, when we are working together, we can lessen the impact of uncertaint­y, complexity and change.

The swarms have relied on local knowledge of diverse informatio­n, simple rules that have no need for complicate­d computatio­n skills, repeated interactio­ns to amplify key signals for speedy decision making, quorum threshold to arrive at a quality decision, and randomness in individual behaviour.

The last principle helps to overcome negative aspects of social proofing so as to avoid group think and be stuck in a rut. By applying the above principles, businesses can source much wisdom from the individual stakeholde­rs.

Secondly, group members need not surrender their individual­ity. This may augur a conducive working space where we add values to a team or organisati­on by bringing something authentic and original to the table without blindly following the herd.

At times this means standing up for what you believe in, and canvassing support for your idea. This is demonstrat­ed by the scout bees vying for the attention of other bees to join them to their preferred nest sites.

Interestin­gly, a sampling of past researches shows the following: firefly algorithm for solving non-linear programmin­g problems, strategy adaptation based bacterial foraging algorithm for numerical optimisati­on, ant colony optimisati­on (ACO) algorithm for determinis­tic optimisati­on, swarm robotics system, particle swarm optimisati­on for production line efficiency, and swarm behavioura­l inversion for undirected underwater search.

The last example is a potentiall­y useful algorithm for the trans-oceanic search of the missing planes and ships. SI-based techniques are also used for controllin­g unmanned military vehicles, and perhaps in the near future, the autonomous (driverless) vehicles on our streets.

Contact Director of VU Postgradua­te programmes, Dr Hendry Ng at hendryng@sunway.edu.my for more details about Victoria University Master of Business Admintrati­on (MBA) and Master of Business (ERP Systems).

 ??  ?? Dr Hendry Ng.
Dr Hendry Ng.

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